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LinearRegression


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 -- Function File: LinearRegression (F, Y)
 -- Function File: LinearRegression (F, Y, W)
 -- Function File: [P, E_VAR, R, P_VAR, FIT_VAR] = LinearRegression
          (...)

     general linear regression

     determine the parameters p_j (j=1,2,...,m) such that the function
     f(x) = sum_(j=1,...,m) p_j*f_j(x) is the best fit to the given
     values y_i by f(x_i) for i=1,...,n, i.e.  minimize
     sum_(i=1,...,n)(y_i-sum_(j=1,...,m) p_j*f_j(x_i))^2 with respect to
     p_j

     parameters:
        * F is an n*m matrix with the values of the basis functions at
          the support points.  In column j give the values of f_j at the
          points x_i (i=1,2,...,n)
        * Y is a column vector of length n with the given values
        * W is a column vector of length n with the weights of the data
          points.  1/w_i is expected to be proportional to the estimated
          uncertainty in the y values.  Then the weighted expression
          sum_(i=1,...,n)(w_i^2*(y_i-f(x_i))^2) is minimized.

     return values:
        * P is the vector of length m with the estimated values of the
          parameters
        * E_VAR is the vector of estimated variances of the provided y
          values.  If weights are provided, then the product e_var_i *
          w^2_i is assumed to be constant.
        * R is the weighted norm of the residual
        * P_VAR is the vector of estimated variances of the parameters
          p_j
        * FIT_VAR is the vector of the estimated variances of the fitted
          function values f(x_i)

     To estimate the variance of the difference between future y values
     and fitted y values use the sum of E_VAR and FIT_VAR

     Caution: do NOT request FIT_VAR for large data sets, as a n by n
     matrix is generated

     See also:
     ols,gls,regress,leasqr,nonlin_curvefit,polyfit,wpolyfit,expfit.


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general linear regression



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adsmax


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ADSMAX  Alternating directions method for direct search optimization.
        [x, fmax, nf] = ADSMAX(FUN, x0, STOPIT, SAVIT, P) attempts to
        maximize the function FUN, using the starting vector x0.
        The alternating directions direct search method is used.
        Output arguments:
               x    = vector yielding largest function value found,
               fmax = function value at x,
               nf   = number of function evaluations.
        The iteration is terminated when either
               - the relative increase in function value between successive
                 iterations is <= STOPIT(1) (default 1e-3),
               - STOPIT(2) function evaluations have been performed
                 (default inf, i.e., no limit), or
               - a function value equals or exceeds STOPIT(3)
                 (default inf, i.e., no test on function values).
        Progress of the iteration is not shown if STOPIT(5) = 0 (default 1).
        If a non-empty fourth parameter string SAVIT is present, then
        `SAVE SAVIT x fmax nf' is executed after each inner iteration.
        By default, the search directions are the co-ordinate directions.
        The columns of a fifth parameter matrix P specify alternative search
        directions (P = EYE is the default).
        NB: x0 can be a matrix.  In the output argument, in SAVIT saves,
            and in function calls, x has the same shape as x0.
        ADSMAX(fun, x0, STOPIT, SAVIT, P, P1, P2,...) allows additional
        arguments to be passed to fun, via feval(fun,x,P1,P2,...).
     Reference:
     N. J. Higham, Optimization by direct search in matrix computations,
        SIAM J. Matrix Anal. Appl, 14(2): 317-333, 1993.
     N. J. Higham, Accuracy and Stability of Numerical Algorithms,
        Second edition, Society for Industrial and Applied Mathematics,
        Philadelphia, PA, 2002; sec. 20.5.



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ADSMAX  Alternating directions method for direct search optimization.
       ...



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battery


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 battery.m: repeatedly call bfgs using a battery of 
 start values, to attempt to find global min
 of a nonconvex function

 INPUTS:
 func: function to mimimize
 args: args of function
 minarg: argument to minimize w.r.t. (usually = 1)
 startvals: kxp matrix of values to try for sure (don't include all zeros, that's automatic)
 max iters per start value
 number of additional random start values to try

 OUTPUT: theta - the best value found - NOT iterated to convergence



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 battery.m: repeatedly call bfgs using a battery of 
 start values, to attemp...



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bfgsmin


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 bfgsmin: bfgs or limited memory bfgs minimization of function

 Usage: [x, obj_value, convergence, iters] = bfgsmin(f, args, control)

 The function must be of the form
 [value, return_2,..., return_m] = f(arg_1, arg_2,..., arg_n)
 By default, minimization is w.r.t. arg_1, but it can be done
 w.r.t. any argument that is a vector. Numeric derivatives are
 used unless analytic derivatives are supplied. See bfgsmin_example.m
 for methods.

 Arguments:
 * f: name of function to minimize (string)
 * args: a cell array that holds all arguments of the function
 	The argument with respect to which minimization is done
 	MUST be a vector
 * control: an optional cell array of 1-8 elements. If a cell
   array shorter than 8 elements is provided, the trailing elements
   are provided with default values.
 	* elem 1: maximum iterations  (positive integer, or -1 or Inf for unlimited (default))
 	* elem 2: verbosity
 		0 = no screen output (default)
 		1 = only final results
 		2 = summary every iteration
 		3 = detailed information
 	* elem 3: convergence criterion
 		1 = strict (function, gradient and param change) (default)
 		0 = weak - only function convergence required
 	* elem 4: arg in f_args with respect to which minimization is done (default is first)
 	* elem 5: (optional) Memory limit for lbfgs. If it's a positive integer
 		then lbfgs will be use. Otherwise ordinary bfgs is used
 	* elem 6: function change tolerance, default 1e-12
 	* elem 7: parameter change tolerance, default 1e-6
 	* elem 8: gradient tolerance, default 1e-5

 Returns:
 * x: the minimizer
 * obj_value: the value of f() at x
 * convergence: 1 if normal conv, other values if not
 * iters: number of iterations performed

 Example: see bfgsmin_example.m



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 bfgsmin: bfgs or limited memory bfgs minimization of function



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bfgsmin_example


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 initial values



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 initial values




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brent_line_min


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 -- Function File: [S,V,N] brent_line_min ( F,DF,ARGS,CTL )
     Line minimization of f along df

     Finds minimum of f on line x0 + dx*w | a < w < b by bracketing.  a
     and b are passed through argument ctl.

     Arguments
     ---------

        * F : string : Name of function.  Must return a real value
        * ARGS : cell : Arguments passed to f or RxC : f's only
          argument.  x0 must be at ARGS{ CTL(2) }
        * CTL : 5 : (optional) Control variables, described below.

     Returned values
     ---------------

        * S : 1 : Minimum is at x0 + s*dx
        * V : 1 : Value of f at x0 + s*dx
        * NEV : 1 : Number of function evaluations

     Control Variables
     -----------------

        * CTL(1) : Upper bound for error on s Default=sqrt(eps)
        * CTL(2) : Position of minimized argument in args Default= 1
        * CTL(3) : Maximum number of function evaluations Default= inf
        * CTL(4) : a Default=-inf
        * CTL(5) : b Default= inf

     Default values will be used if ctl is not passed or if nan values
     are given.


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Line minimization of f along df



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cdiff


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 c = cdiff (func,wrt,N,dfunc,stack,dx) - Code for num. differentiation
   = "function df = dfunc (var1,..,dvar,..,varN) .. endfunction
 
 Returns a string of octave code that defines a function 'dfunc' that
 returns the derivative of 'func' with respect to it's 'wrt'th
 argument.

 The derivatives are obtained by symmetric finite difference.

 dfunc()'s return value is in the same format as that of  ndiff()

 func  : string : name of the function to differentiate

 wrt   : int    : position, in argument list, of the differentiation
                  variable.                                Default:1

 N     : int    : total number of arguments taken by 'func'. 
                  If N=inf, dfunc will take variable argument list.
                                                         Default:wrt

 dfunc : string : Name of the octave function that returns the
                   derivatives.                   Default:['d',func]

 stack : string : Indicates whether 'func' accepts vertically
                  (stack="rstack") or horizontally (stack="cstack")
                  arguments. Any other string indicates that 'func'
                  does not allow stacking.                Default:''

 dx    : real   : Step used in the symmetric difference scheme.
                                                  Default:10*sqrt(eps)

 See also : ndiff, eval, todisk



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 c = cdiff (func,wrt,N,dfunc,stack,dx) - Code for num. differentiation
   = "...



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cg_min


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 -- Function File: [X0,V,NEV] cg_min ( F,DF,ARGS,CTL )
     NonLinear Conjugate Gradient method to minimize function F.

     Arguments
     ---------

        * F : string : Name of function.  Return a real value
        * DF : string : Name of f's derivative.  Returns a (R*C) x 1
          vector
        * ARGS: cell : Arguments passed to f.
        * CTL : 5-vec : (Optional) Control variables, described below

     Returned values
     ---------------

        * X0 : matrix : Local minimum of f
        * V : real : Value of f in x0
        * NEV : 1 x 2 : Number of evaluations of f and of df

     Control Variables
     -----------------

        * CTL(1) : 1 or 2 : Select stopping criterion amongst :
        * CTL(1)==0 : Default value
        * CTL(1)==1 : Stopping criterion : Stop search when value
          doesn't improve, as tested by ctl(2) > Deltaf/max(|f(x)|,1)
          where Deltaf is the decrease in f observed in the last
          iteration (each iteration consists R*C line searches).
        * CTL(1)==2 : Stopping criterion : Stop search when updates are
          small, as tested by ctl(2) > max { dx(i)/max(|x(i)|,1) | i in
          1..N } where dx is the change in the x that occured in the
          last iteration.
        * CTL(2) : Threshold used in stopping tests.  Default=10*eps
        * CTL(2)==0 : Default value
        * CTL(3) : Position of the minimized argument in args Default=1
        * CTL(3)==0 : Default value
        * CTL(4) : Maximum number of function evaluations Default=inf
        * CTL(4)==0 : Default value
        * CTL(5) : Type of optimization:
        * CTL(5)==1 : "Fletcher-Reves" method
        * CTL(5)==2 : "Polak-Ribiere" (Default)
        * CTL(5)==3 : "Hestenes-Stiefel" method

     CTL may have length smaller than 4.  Default values will be used if
     ctl is not passed or if nan values are given.

     Example:
     --------

     function r=df( l ) b=[1;0;-1]; r = -( 2*l{1} - 2*b +
     rand(size(l{1}))); endfunction
     function r=ff( l ) b=[1;0;-1]; r = (l{1}-b)' * (l{1}-b);
     endfunction
     ll = { [10; 2; 3] };
     ctl(5) = 3;
     [x0,v,nev]=cg_min( "ff", "df", ll, ctl )

     Comment: In general, BFGS method seems to be better performin in
     many cases but requires more computation per iteration See also
     http://en.wikipedia.org/wiki/Nonlinear_conjugate_gradient.

     See also: bfgsmin.


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NonLinear Conjugate Gradient method to minimize function F.



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cpiv_bard


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 [lb, idx, ridx, mv] = cpiv_bard (v, m[, incl])

 v: column vector; m: matrix; incl (optional): index. length (v)
 must equal rows (m). Finds column vectors w and l with w == v + m *
 l, w >= 0, l >= 0, l.' * w == 0. Chooses idx, w, and l so that
 l(~idx) == 0, l(idx) == -inv (m(idx, idx)) * v(idx), w(idx) roughly
 == 0, and w(~idx) == v(~idx) + m(idx, ~idx).' * l(idx). idx indexes
 at least everything indexed by incl, but l(incl) may be < 0. lb:
 l(idx) (column vector); idx: logical index, defined above; ridx:
 ~idx & w roughly == 0; mv: [m, v] after performing a Gauss-Jordan
 'sweep' (with gjp.m) on each diagonal element indexed by idx.
 Except the handling of incl (which enables handling of equality
 constraints in the calling code), this is called solving the
 'complementary pivot problem' (Cottle, R. W. and Dantzig, G. B.,
 'Complementary pivot theory of mathematical programming', Linear
 Algebra and Appl. 1, 102--125. References for the current
 algorithm: Bard, Y.: Nonlinear Parameter Estimation, p. 147--149,
 Academic Press, New York and London 1974; Bard, Y., 'An eclectic
 approach to nonlinear programming', Proc. ANU Sem. Optimization,
 Canberra, Austral. Nat. Univ.).



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 [lb, idx, ridx, mv] = cpiv_bard (v, m[, incl])



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curvefit_stat


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 -- Function File: INFO = curvefit_stat (F, P, X, Y, SETTINGS)

     Frontend for computation of statistics for fitting of values,
     computed by a model function, to observed values.

     Please refer to the description of 'residmin_stat'.  The only
     differences to 'residmin_stat' are the additional arguments X
     (independent values) and Y (observations), that the model function
     F, if provided, has a second obligatory argument which will be set
     to X and is supposed to return guesses for the observations (with
     the same dimensions), and that the possibly user-supplied function
     for the jacobian of the model function has also a second obligatory
     argument which will be set to X.

     See also: residmin_stat.


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Frontend for computation of statistics for fitting of values, computed
by a m...



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dcdp


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 function prt = dcdp (f, p, dp, func[, bounds])

 This is an interface to __dfdp__.m, similar to dfdp.m, but for
 functions only of parameters 'p', not of independents 'x'. See
 dfdp.m.

 dfpdp is more general and is meant to be used instead of dcdp in
 optimization.



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 function prt = dcdp (f, p, dp, func[, bounds])



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de_min


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 de_min: global optimisation using differential evolution

 Usage: [x, obj_value, nfeval, convergence] = de_min(fcn, control)

 minimization of a user-supplied function with respect to x(1:D),
 using the differential evolution (DE) method based on an algorithm
 by  Rainer Storn (http://www.icsi.berkeley.edu/~storn/code.html)
 See: http://www.softcomputing.net/tevc2009_1.pdf


 Arguments:  
 ---------------
 fcn        string : Name of function. Must return a real value
 control    vector : (Optional) Control variables, described below
         or struct

 Returned values:
 ----------------
 x          vector : parameter vector of best solution
 obj_value  scalar : objective function value of best solution
 nfeval     scalar : number of function evaluations
 convergence       : 1 = best below value to reach (VTR)
                     0 = population has reached defined quality (tol)
                    -1 = some values are close to constraints/boundaries
                    -2 = max number of iterations reached (maxiter)
                    -3 = max number of functions evaluations reached (maxnfe)

 Control variable:   (optional) may be named arguments (i.e. "name",value
 ----------------    pairs), a struct, or a vector, where
                     NaN's are ignored.

 XVmin        : vector of lower bounds of initial population
                *** note: by default these are no constraints ***
 XVmax        : vector of upper bounds of initial population
 constr       : 1 -> enforce the bounds not just for the initial population
 const        : data vector (remains fixed during the minimization)
 NP           : number of population members
 F            : difference factor from interval [0, 2]
 CR           : crossover probability constant from interval [0, 1]
 strategy     : 1 --> DE/best/1/exp           7 --> DE/best/1/bin
                2 --> DE/rand/1/exp           8 --> DE/rand/1/bin
                3 --> DE/target-to-best/1/exp 9 --> DE/target-to-best/1/bin
                4 --> DE/best/2/exp           10--> DE/best/2/bin
                5 --> DE/rand/2/exp           11--> DE/rand/2/bin
                6 --> DEGL/SAW/exp            else  DEGL/SAW/bin
 refresh      : intermediate output will be produced after "refresh"
                iterations. No intermediate output will be produced
                if refresh is < 1
 VTR          : Stopping criterion: "Value To Reach"
                de_min will stop when obj_value <= VTR.
                Use this if you know which value you expect.
 tol          : Stopping criterion: "tolerance"
                stops if (best-worst)/max(1,worst) < tol
                This stops basically if the whole population is "good".
 maxnfe       : maximum number of function evaluations
 maxiter      : maximum number of iterations (generations)

       The algorithm seems to work well only if [XVmin,XVmax] covers the 
       region where the global minimum is expected.
       DE is also somewhat sensitive to the choice of the
       difference factor F. A good initial guess is to choose F from
       interval [0.5, 1], e.g. 0.8.
       CR, the crossover probability constant from interval [0, 1]
       helps to maintain the diversity of the population and is
       rather uncritical but affects strongly the convergence speed.
       If the parameters are correlated, high values of CR work better.
       The reverse is true for no correlation.
       Experiments suggest that /bin likes to have a slightly
       larger CR than /exp.
       The number of population members NP is also not very critical. A
       good initial guess is 10*D. Depending on the difficulty of the
       problem NP can be lower than 10*D or must be higher than 10*D
       to achieve convergence.

 Default Values:
 ---------------
 XVmin = [-2];
 XVmax = [ 2];
 constr= 0;
 const = [];
 NP    = 10 *D
 F     = 0.8;
 CR    = 0.9;
 strategy = 12;
 refresh  = 0;
 VTR   = -Inf;
 tol   = 1.e-3;
 maxnfe  = 1e6;
 maxiter = 1000;


 Example to find the minimum of the Rosenbrock saddle:
 ----------------------------------------------------
 Define f as:
                    function result = f(x);
                      result = 100 * (x(2) - x(1)^2)^2 + (1 - x(1))^2;
                    end
 Then type:

 	ctl.XVmin = [-2 -2];
 	ctl.XVmax = [ 2  2];
 	[x, obj_value, nfeval, convergence] = de_min (@f, ctl);

 Keywords: global-optimisation optimisation minimisation



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 de_min: global optimisation using differential evolution



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deriv


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 -- Function File: DX = deriv (F, X0)
 -- Function File: DX = deriv (F, X0, H)
 -- Function File: DX = deriv (F, X0, H, O)
 -- Function File: DX = deriv (F, X0, H, O, N)
     Calculate derivate of function F.

     F must be a function handle or the name of a function that takes X0
     and returns a variable of equal length and orientation.  X0 must be
     a numeric vector or scalar.

     H defines the step taken for the derivative calculation.  Defaults
     to 1e-7.

     O defines the order of the calculation.  Supported values are 2
     (h^2 order) or 4 (h^4 order).  Defaults to 2.

     N defines the derivative order.  Defaults to the 1st derivative of
     the function.  Can be up to the 4th derivative.

     Reference: Numerical Methods for Mathematics, Science, and
     Engineering by John H. Mathews.


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Calculate derivate of function F.



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dfdp


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 function prt = dfdp (x, f, p, dp, func[, bounds])
 numerical partial derivatives (Jacobian) df/dp for use with leasqr
 --------INPUT VARIABLES---------
 x=vec or matrix of indep var(used as arg to func) x=[x0 x1 ....]
 f=func(x,p) vector initialsed by user before each call to dfdp
 p= vec of current parameter values
 dp= fractional increment of p for numerical derivatives
      dp(j)>0 central differences calculated
      dp(j)<0 one sided differences calculated
      dp(j)=0 sets corresponding partials to zero; i.e. holds p(j) fixed
 func=function (string or handle) to calculate the Jacobian for,
      e.g. to calc Jacobian for function expsum prt=dfdp(x,f,p,dp,'expsum')
 bounds=two-column-matrix of lower and upper bounds for parameters
      If no 'bounds' options is specified to leasqr, it will call
      dfdp without the 'bounds' argument.
----------OUTPUT VARIABLES-------
 prt= Jacobian Matrix prt(i,j)=df(i)/dp(j)
================================

 dfxpdp is more general and is meant to be used instead of dfdp in
 optimization.



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 function prt = dfdp (x, f, p, dp, func[, bounds])
 numerical partial derivat...



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dfpdp


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 function jac = dfpdp (p, func[, hook])

 Returns Jacobian of func (p) with respect to p with finite
 differencing. The optional argument hook is a structure which can
 contain the following fields at the moment:

 hook.f: value of func(p) for p as given in the arguments

 hook.diffp: positive vector of fractional steps from given p in
 finite differencing (actual steps may be smaller if bounds are
 given). The default is .001 * ones (size (p)).

 hook.diff_onesided: logical vector, indexing elements of p for
 which only one-sided differences should be computed (faster); even
 if not one-sided, differences might not be exactly central if
 bounds are given. The default is false (size (p)).

 hook.fixed: logical vector, indexing elements of p for which zero
 should be returned instead of the guessed partial derivatives
 (useful in optimization if some parameters are not optimized, but
 are 'fixed').

 hook.lbound, hook.ubound: vectors of lower and upper parameter
 bounds (or -Inf or +Inf, respectively) to be respected in finite
 differencing. The consistency of bounds is not checked.



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 function jac = dfpdp (p, func[, hook])



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dfxpdp


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 function jac = dfxpdp (x, p, func[, hook])

 Returns Jacobian of func (p, x) with respect to p with finite
 differencing. The optional argument hook is a structure which can
 contain the following fields at the moment:

 hook.f: value of func(p, x) for p and x as given in the arguments

 hook.diffp: positive vector of fractional steps from given p in
 finite differencing (actual steps may be smaller if bounds are
 given). The default is .001 * ones (size (p));

 hook.diff_onesided: logical vector, indexing elements of p for
 which only one-sided differences should be computed (faster); even
 if not one-sided, differences might not be exactly central if
 bounds are given. The default is false (size (p)).

 hook.fixed: logical vector, indexing elements of p for which zero
 should be returned instead of the guessed partial derivatives
 (useful in optimization if some parameters are not optimized, but
 are 'fixed').

 hook.lbound, hook.ubound: vectors of lower and upper parameter
 bounds (or -Inf or +Inf, respectively) to be respected in finite
 differencing. The consistency of bounds is not checked.



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 function jac = dfxpdp (x, p, func[, hook])



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expfit


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 USAGE  [alpha,c,rms] = expfit( deg, x1, h, y )

 Prony's method for non-linear exponential fitting

 Fit function:   \sum_1^{deg} c(i)*exp(alpha(i)*x)

 Elements of data vector y must correspond to
 equidistant x-values starting at x1 with stepsize h

 The method is fully compatible with complex linear
 coefficients c, complex nonlinear coefficients alpha
 and complex input arguments y, x1, non-zero h .
 Fit-order deg  must be a real positive integer.

 Returns linear coefficients c, nonlinear coefficients
 alpha and root mean square error rms. This method is
 known to be more stable than 'brute-force' non-linear
 least squares fitting.

 Example
    x0 = 0; step = 0.05; xend = 5; x = x0:step:xend;
    y = 2*exp(1.3*x)-0.5*exp(2*x);
    error = (rand(1,length(y))-0.5)*1e-4;
    [alpha,c,rms] = expfit(2,x0,step,y+error)

  alpha =
    2.0000
    1.3000
  c =
    -0.50000
     2.00000
  rms = 0.00028461

 The fit is very sensitive to the number of data points.
 It doesn't perform very well for small data sets.
 Theoretically, you need at least 2*deg data points, but
 if there are errors on the data, you certainly need more.

 Be aware that this is a very (very,very) ill-posed problem.
 By the way, this algorithm relies heavily on computing the
 roots of a polynomial. I used 'roots.m', if there is
 something better please use that code.

 Demo for a complex fit-function:
 deg= 2; N= 20; x1= -(1+i), x= linspace(x1,1+i/2,N).';
 h = x(2) - x(1)
 y= (2+i)*exp( (-1-2i)*x ) + (-1+3i)*exp( (2+3i)*x );
 A= 5e-2; y+= A*(randn(N,1)+randn(N,1)*i); % add complex noise
 [alpha,c,rms]= expfit( deg, x1, h, y )



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 USAGE  [alpha,c,rms] = expfit( deg, x1, h, y )



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fmincon


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 -- Function File: fmincon (OBJF, X0)
 -- Function File: fmincon (OBJF, X0, A, B)
 -- Function File: fmincon (OBJF, X0, A, B, AEQ, BEQ)
 -- Function File: fmincon (OBJF, X0, A, B, AEQ, BEQ, LB, UB)
 -- Function File: fmincon (OBJF, X0, A, B, AEQ, BEQ, LB, UB, NONLCON)
 -- Function File: fmincon (OBJF, X0, A, B, AEQ, BEQ, LB, UB, NONLCON,
          OPTIONS)
 -- Function File: fmincon (PROBLEM)
 -- Function File: [X, FVAL, CVG, OUTP] = fmincon (...)
     Compatibility frontend for nonlinear minimization of a scalar
     objective function.

     This function is for Matlab compatibility and provides a subset of
     the functionality of 'nonlin_min'.

     OBJF: objective function.  It gets a column vector of real
     parameters as argument.

     X0: real column vector of initial parameters.

     A, B: Inequality constraints of the parameters 'p' with 'A * p - b
     <= 0'.

     AEQ, BEQ: Equality constraints of the parameters 'p' with 'A * p -
     b = 0'.

     LB, UB: Bounds of the parameters 'p' with 'lb <= p <= ub'.

     NONLCON: Nonlinear constraints.  Function returning the current
     values of nonlinear inequality constraints (constrained to '<= 0')
     in the first output and the current values of nonlinear equality
     constraints in the second output.

     OPTIONS: structure whose fields stand for optional settings
     referred to below.  The fields can be set by 'optimset()'.

     An argument can be set to '[]' to indicate that its value is not
     set.

     'fmincon' may also be called with a single structure argument with
     the fields 'objective', 'x0', 'Aineq', 'bineq', 'Aeq', 'beq', 'lb',
     'ub', 'nonlcon' and 'options', resembling the separate input
     arguments above.  Additionally, the structure must have the field
     'solver', set to "fmincon".

     The returned values are the column vector of final parameters X,
     the final value of the objective function FVAL, an integer CVG
     indicating if and how optimization succeeded or failed, and a
     structure OUTP with additional information, curently with possible
     fields: 'iterations', the number of iterations, 'funcCount', the
     number of objective function calls (indirect calls by gradient
     function not counted), 'constrviolation', the maximum of the
     constraint violations.  The backend may define additional fields.
     CVG is greater than zero for success and less than or equal to zero
     for failure; its possible values depend on the used backend and
     currently can be '0' (maximum number of iterations exceeded), '1'
     (success without further specification of criteria), '2' (parameter
     change less than specified precision in two consecutive
     iterations), '3' (improvement in objective function less than
     specified), '-1' (algorithm aborted by a user function), or '-4'
     (algorithm got stuck).

     Options:
     ........

     'Algorithm'
          'interior-point', 'sqp', and 'sqp-legacy' are mapped to optims
          'lm_feasible' algorithm (the default) to satisfy constraints
          throughout the optimization.  'active-set' is mapped to
          'octave_sqp', which may perform better if constraints only
          need to be satisfied for the result.  Other algorithms are
          available with 'nonlin_min'.

     'OutputFcn'
          Similar to the setting 'user_interaction' -- see
          'optim_doc()'.  Differently, 'OutputFcn' returns only one
          output argument, the STOP flag.

     'GradObj'
          If set to '"on"', OBJF must return the gradient of the
          objective function as a second output.  The default is
          '"off"'.

     'GradConstr'
          If set to '"on"', NONLCON must return the Jacobians of the
          inequality- and equality-constraints as third and fourth
          output, respectively.

     'HessianFcn'
          If set to '"objective"', OBJF must not only return the
          gradient as the second, but also the Hessian as the third
          output.

     'Display, FinDiffRelStep, FinDiffType, TypicalX, MaxIter, TolFun, TolX,'
          See documentation of these options in 'optim_doc()'.

     For description of individual backends, type 'optim_doc ("scalar
     optimization")' and choose the backend in the menu.


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Compatibility frontend for nonlinear minimization of a scalar objective
funct...



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fmins


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 -- Function File: [X] = fmins (F,X0,OPTIONS,GRAD,P1,P2, ...)

     Find the minimum of a funtion of several variables.  By default the
     method used is the Nelder&Mead Simplex algorithm

     Example usage: fmins(inline('(x(1)-5).^2+(x(2)-8).^4'),[0;0])

     *Inputs*
     F
          A string containing the name of the function to minimize
     X0
          A vector of initial parameters fo the function F.
     OPTIONS
          Vector with control parameters (not all parameters are used)
          options(1) - Show progress (if 1, default is 0, no progress)
          options(2) - Relative size of simplex (default 1e-3)
          options(6) - Optimization algorithm
             if options(6)==0 - Nelder & Mead simplex (default)
             if options(6)==1 - Multidirectional search Method
             if options(6)==2 - Alternating Directions search
          options(5)
             if options(6)==0 && options(5)==0 - regular simplex
             if options(6)==0 && options(5)==1 - right-angled simplex
                Comment: the default is set to "right-angled simplex".
                  this works better for me on a broad range of problems,
                  although the default in nmsmax is "regular simplex"
          options(10) - Maximum number of function evaluations
     GRAD
          Unused (For compatibility with Matlab)
     P1, P2, ...
          Optional parameters for function F


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Find the minimum of a funtion of several variables.



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gjp


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 m = gjp (m, k[, l])

 m: matrix; k, l: row- and column-index of pivot, l defaults to k.

 Gauss-Jordon pivot as defined in Bard, Y.: Nonlinear Parameter
 Estimation, p. 296, Academic Press, New York and London 1974. In
 the pivot column, this seems not quite the same as the usual
 Gauss-Jordan(-Clasen) pivot. Bard gives Beaton, A. E., 'The use of
 special matrix operators in statistical calculus' Research Bulletin
 RB-64-51 (1964), Educational Testing Service, Princeton, New Jersey
 as a reference, but this article is not easily accessible. Another
 reference, whose definition of gjp differs from Bards by some
 signs, is Clarke, R. B., 'Algorithm AS 178: The Gauss-Jordan sweep
 operator with detection of collinearity', Journal of the Royal
 Statistical Society, Series C (Applied Statistics) (1982), 31(2),
 166--168.



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 m = gjp (m, k[, l])



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jacobs


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 -- Function File: Df = jacobs (X, F)
 -- Function File: Df = jacobs (X, F, HOOK)
     Calculate the jacobian of a function using the complex step method.

     Let F be a user-supplied function.  Given a point X at which we
     seek for the Jacobian, the function 'jacobs' returns the Jacobian
     matrix 'd(f(1), ..., df(end))/d(x(1), ..., x(n))'.  The function
     uses the complex step method and thus can be applied to real
     analytic functions.

     The optional argument HOOK is a structure with additional options.
     HOOK can have the following fields:
        * 'h' - can be used to define the magnitude of the complex step
          and defaults to 1e-20; steps larger than 1e-3 are not allowed.
        * 'fixed' - is a logical vector internally usable by some
          optimization functions; it indicates for which elements of X
          no gradient should be computed, but zero should be returned.

     For example:

          f = @(x) [x(1)^2 + x(2); x(2)*exp(x(1))];
          Df = jacobs ([1, 2], f)


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Calculate the jacobian of a function using the complex step method.



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leasqr


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 -- Function File: leasqr (X, Y, PIN, F)
 -- Function File: leasqr (X, Y, PIN, F, STOL)
 -- Function File: leasqr (X, Y, PIN, F, STOL, NITER)
 -- Function File: leasqr (X, Y, PIN, F, STOL, NITER, WT)
 -- Function File: leasqr (X, Y, PIN, F, STOL, NITER, WT, DP)
 -- Function File: leasqr (X, Y, PIN, F, STOL, NITER, WT, DP, DFDP)
 -- Function File: leasqr (X, Y, PIN, F, STOL, NITER, WT, DP, DFDP,
          OPTIONS)
 -- Function File: [F, P, CVG, ITER, CORP, COVP, COVR, STDRESID, Z, R2]
          = leasqr (...)
     Levenberg-Marquardt nonlinear regression.

     Input arguments:

     X
          Vector or matrix of independent variables.

     Y
          Vector or matrix of observed values.

     PIN
          Vector of initial parameters to be adjusted by leasqr.

     F
          Name of function or function handle.  The function must be of
          the form 'y = f(x, p)', with y, x, p of the form Y, X, PIN.

     STOL
          Scalar tolerance on fractional improvement in scalar sum of
          squares, i.e., 'sum ((WT .* (Y-F))^2)'.  Set to 0.0001 if
          empty or not given;

     NITER
          Maximum number of iterations.  Set to 20 if empty or not
          given.

     WT
          Statistical weights (same dimensions as Y).  These should be
          set to be proportional to 'sqrt (Y) ^-1', i.e., the covariance
          matrix of the data is assumed to be proportional to diagonal
          with diagonal equal to '(WT.^2)^-1'.  The constant of
          proportionality will be estimated.  Set to 'ones (size (Y))'
          if empty or not given.

     DP
          Fractional increment of P for numerical partial derivatives.
          Set to '0.001 * ones (size (PIN))' if empty or not given.

             * dp(j) > 0 means central differences on j-th parameter
               p(j).
             * dp(j) < 0 means one-sided differences on j-th parameter
               p(j).
             * dp(j) = 0 holds p(j) fixed, i.e., leasqr won't change
               initial guess: pin(j)

     DFDP
          Name of partial derivative function in quotes or function
          handle.  If not given or empty, set to 'dfdp', a slow but
          general partial derivatives function.  The function must be of
          the form 'prt = dfdp (x, f, p, dp, F [,bounds])'.  For
          backwards compatibility, the function will only be called with
          an extra 'bounds' argument if the 'bounds' option is
          explicitly specified to leasqr (see dfdp.m).

     OPTIONS
          Structure with multiple options.  The following fields are
          recognized:

          fract_prec
               Column vector (same length as PIN) of desired fractional
               precisions in parameter estimates.  Iterations are
               terminated if change in parameter vector (chg) relative
               to current parameter estimate is less than their
               corresponding elements in 'fract_prec', i.e., 'all (abs
               (chg) < abs (options.fract_prec .* current_parm_est))' on
               two consecutive iterations.  Defaults to 'zeros (size
               (PIN))'.

          max_fract_change
               Column vector (same length as PIN) of maximum fractional
               step changes in parameter vector.  Fractional change in
               elements of parameter vector is constrained to be at most
               'max_fract_change' between sucessive iterations, i.e.,
               'abs (chg(i)) = abs (min([chg(i),
               options.max_fract_change(i) * current param estimate]))'.
               Defaults to 'Inf * ones (size (PIN))'.

          inequc
               Cell-array containing up to four entries, two entries for
               linear inequality constraints and/or one or two entries
               for general inequality constraints.  Initial parameters
               must satisfy these constraints.  Either linear or general
               constraints may be the first entries, but the two entries
               for linear constraints must be adjacent and, if two
               entries are given for general constraints, they also must
               be adjacent.  The two entries for linear constraints are
               a matrix (say m) and a vector (say v), specifying linear
               inequality constraints of the form 'm.'  * parameters + v
               >= 0'.  If the constraints are just bounds, it is
               suggested to specify them in 'options.bounds' instead,
               since then some sanity tests are performed, and since the
               function 'dfdp.m' is guarantied not to violate
               constraints during determination of the numeric gradient
               only for those constraints specified as 'bounds'
               (possibly with violations due to a certain inaccuracy,
               however, except if no constraints except bounds are
               specified).  The first entry for general constraints must
               be a differentiable vector valued function (say h),
               specifying general inequality constraints of the form 'h
               (p[, idx]) >= 0'; p is the column vector of optimized
               paraters and the optional argument idx is a logical
               index.  h has to return the values of all constraints if
               idx is not given, and has to return only the indexed
               constraints if idx is given (so computation of the other
               constraints can be spared).  If a second entry for
               general constraints is given, it must be a function (say
               dh) which returnes a matrix whos rows contain the
               gradients of the constraint function h with respect to
               the optimized parameters.  It has the form jac_h = dh
               (vh, p, dp, h, idx[, bounds]); p is the column vector of
               optimized parameters, and idx is a logical index -- only
               the rows indexed by idx must be returned (so computation
               of the others can be spared).  The other arguments of dh
               are for the case that dh computes numerical gradients: vh
               is the column vector of the current values of the
               constraint function h, with idx already applied.  h is a
               function h (p) to compute the values of the constraints
               for parameters p, it will return only the values indexed
               by idx.  dp is a suggestion for relative step width,
               having the same value as the argument 'dp' of leasqr
               above.  If bounds were specified to leasqr, they are
               provided in the argument bounds of dh, to enable their
               consideration in determination of numerical gradients.
               If dh is not specified to leasqr, numerical gradients are
               computed in the same way as with 'dfdp.m' (see above).
               If some constraints are linear, they should be specified
               as linear constraints (or bounds, if applicable) for
               reasons of performance, even if general constraints are
               also specified.

          bounds
               Two-column-matrix, one row for each parameter in PIN.
               Each row contains a minimal and maximal value for each
               parameter.  Default: [-Inf, Inf] in each row.  If this
               field is used with an existing user-side function for
               'dFdp' (see above) the functions interface might have to
               be changed.

          equc
               Equality constraints, specified the same way as
               inequality constraints (see field 'options.inequc').
               Initial parameters must satisfy these constraints.  Note
               that there is possibly a certain inaccuracy in honoring
               constraints, except if only bounds are specified.
               _Warning_: If constraints (or bounds) are set, returned
               guesses of CORP, COVP, and Z are generally invalid, even
               if no constraints are active for the final parameters.
               If equality constraints are specified, CORP, COVP, and Z
               are not guessed at all.

          cpiv
               Function for complementary pivot algorithm for inequality
               constraints.  Defaults to cpiv_bard.  No different
               function is supplied.

          For backwards compatibility, OPTIONS can also be a matrix
          whose first and second column contains the values of
          fract_prec and max_fract_change, respectively.

     Output:

     F
          Column vector of values computed: f = F(x,p).

     P
          Column vector trial or final parameters, i.e, the solution.

     CVG
          Scalar: = 1 if convergence, = 0 otherwise.

     ITER
          Scalar number of iterations used.

     CORP
          Correlation matrix for parameters.

     COVP
          Covariance matrix of the parameters.

     COVR
          Diag(covariance matrix of the residuals).

     STDRESID
          Standardized residuals.

     Z
          Matrix that defines confidence region (see comments in the
          source).

     R2
          Coefficient of multiple determination, intercept form.

     Not suitable for non-real residuals.

     References: Bard, Nonlinear Parameter Estimation, Academic Press,
     1974.  Draper and Smith, Applied Regression Analysis, John Wiley
     and Sons, 1981.


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Levenberg-Marquardt nonlinear regression.



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line_min


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 [a,fx,nev] = line_min (f, dx, args, narg, h, nev_max) - Minimize f() along dx

 INPUT ----------
 f    : string  : Name of minimized function
 dx   : matrix  : Direction along which f() is minimized
 args : cell    : Arguments of f
 narg : integer : Position of minimized variable in args.  Default=1
 h    : scalar  : Step size to use for centered finite difference
 approximation of first and second derivatives. Default=1E-3.
 nev_max : integer : Maximum number of function evaluations.  Default=30

 OUTPUT ---------
 a    : scalar  : Value for which f(x+a*dx) is a minimum (*)
 fx   : scalar  : Value of f(x+a*dx) at minimum (*)
 nev  : integer : Number of function evaluations

 (*) The notation f(x+a*dx) assumes that args == {x}.

 Reference: David G Luenberger's Linear and Nonlinear Programming



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 [a,fx,nev] = line_min (f, dx, args, narg, h, nev_max) - Minimize f() along dx



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linprog


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 -- Function File: X = linprog (F, A, B)
 -- Function File: X = linprog (F, A, B, AEQ, BEQ)
 -- Function File: X = linprog (F, A, B, AEQ, BEQ, LB, UB)
 -- Function File: [X, FVAL] = linprog (...)
     Solve a linear problem.

     Finds

          min (f' * x)

     (both f and x are column vectors) subject to

          A   * x <= b
          Aeq * x  = beq
          lb <= x <= ub

     If not specified, AEQ and BEQ default to empty matrices.

     If not specified, the lower bound LB defaults to minus infinite and
     the upper bound UB defaults to infinite.

     See also: glpk.


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Solve a linear problem.



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lsqcurvefit


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 -- Function File: lsqcurvefit (FUN, X0, XDATA, YDATA)
 -- Function File: lsqcurvefit (FUN, X0, XDATA, YDATA, LB, UB)
 -- Function File: lsqcurvefit (FUN, X0, XDATA, YDATA, LB, UB, OPTIONS)
 -- Function File: lsqcurvefit (PROBLEM)
 -- Function File: [X, RESNORM, RESIDUAL, EXITFLAG, OUTPUT, LAMBDA,
          JACOBIAN] = lsqcurvefit (...)
     Solve nonlinear least-squares (nonlinear data-fitting) problems
          min [EuclidianNorm (f(x, xdata) - ydata)] .^ 2
           x

     The first four input arguments must be provided with non-empty
     initial guess X0.  For a given input XDATA, YDATA is the observed
     output.  YDATA must be the same size as the vector (or matrix)
     returned by FUN.  The optional bounds LB and UB should be the same
     size as X0.

     'lsqcurvefit' may also be called with a single structure argument
     with the fields 'fun', 'x0', 'xdata', 'ydata', 'lb', 'ub', and
     'options', resembling the separate input arguments above.  For
     compatibility reasons, field 'fun' may also be called 'objective'.
     Additionally, the structure must have the field 'solver', set to
     "lsqcurvefit".

     OPTIONS can be set with 'optimset'.  Follwing Matlab compatible
     options are recognized:

     'Algorithm' String specifying backend algorithm.  Currently
     available "lm_svd_feasible" only.

     'TolFun' Minimum fractional improvement in objective function in an
     iteration (termination criterium).  Default: 1e-6.

     'TypicalX' Typical values of x.  Default: 1.

     'MaxIter' Maximum number of iterations allowed.  Default: 400.

     'Jacobian' If set to "on", the function FUN must return a second
     output containing a user-specified Jacobian.  The Jacobian is
     computed using finite differences otherwise.  Default: "off"

     'FinDiffType' "centered" or "forward" (Default) type finite
     differences estimation.

     'FinDiffRelStep' Step size factor.  The default is sqrt(eps) for
     forward finite differences, and eps^(1/3) for central finite
     differences

     'OutputFcn' One or more user-defined functions, either as a
     function handle or as a cell array of function handles that an
     optimization function calls at each iteration.  The function
     definition has the following form:

     'stop = outfun(x, optimValues, state)'

     'x' is the point computed at the current iteration.  'optimValues'
     is a structure containing data from the current iteration in the
     following fields: "iteration"- number of current iteration.
     "residual"- residuals.  'state' is the state of the algorithm:
     "init" at start, "iter" after each iteration and "done" at the end.

     'Display' String indicating the degree of verbosity.  Default:
     "off".  Currently only supported values are "off" (no messages) and
     "iter" (some messages after each iteration).

     Returned values:

     X
          Coefficients to best fit the nonlinear function fun(x,xdata)
          to the observed values ydata.

     RESNORM
          Scalar value of objective as squared EuclidianNorm(f(x)).

     RESIDUAL
          Value of solution residuals f(x).

     EXITFLAG
          Status of solution:

          '0'
               Maximum number of iterations reached.

          '2'
               Change in x was less than the specified tolerance.

          '3'
               Change in the residual was less than the specified
               tolerance.

          '-1'
               Output function terminated the algorithm.

     OUTPUT
          Structure with additional information, currently the only
          field is 'iterations', the number of used iterations.

     LAMBDA
          Structure containing Lagrange multipliers at the solution X
          sepatared by constraint type (LB and UB).

     JACOBIAN
          m-by-n matrix, where JACOBIAN(i,j) is the partial derivative
          of FUN(I) with respect to X(J) If 'Jacobian' is set to "on" in
          OPTIONS then FUN must return a second argument providing a
          user-sepcified Jacobian.  Otherwise, lsqnonlin approximates
          the Jacobian using finite differences.

     This function is a compatibility wrapper.  It calls the more
     general 'nonlin_curvefit' function internally.

     See also: lsqnonlin, nonlin_residmin, nonlin_curvefit.


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Solve nonlinear least-squares (nonlinear data-fitting) problems
     min [Euc...



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lsqlin


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 -- Function File: lsqlin (C, D, A, B)
 -- Function File: lsqlin (C, D, A, B, AEQ, BEQ, LB, UB)
 -- Function File: lsqlin (C, D, A, B, AEQ, BEQ, LB, UB, X0)
 -- Function File: lsqlin (C, D, A, B, AEQ, BEQ, LB, UB, X0, OPTIONS)
 -- Function File: [X, RESNORM, RESIDUAL, EXITFLAG, OUTPUT, LAMBDA] =
          lsqlin (...)
     Solve the linear least squares program
          min 0.5 sumsq(C*x - d)
          x
     subject to
          A*X <= B,
          AEQ*X = BEQ,
          LB <= X <= UB.

     The initial guess X0 and the constraint arguments (A and B, AEQ and
     BEQ, LB and UB) can be set to the empty matrix ('[]') if not given.
     If the initial guess X0 is feasible the algorithm is faster.

     OPTIONS can be set with 'optimset', currently the only option is
     'MaxIter', the maximum number of iterations (default: 200).

     Returned values:

     X
          Position of minimum.

     RESNORM
          Scalar value of objective as sumsq(C*x - d).

     RESIDUAL
          Vector of solution residuals C*x - d.

     EXITFLAG
          Status of solution:

          '0'
               Maximum number of iterations reached.

          '-2'
               The problem is infeasible.

          '1'
               Global solution found.

     OUTPUT
          Structure with additional information, currently the only
          field is 'iterations', the number of used iterations.

     LAMBDA
          Structure containing Lagrange multipliers corresponding to the
          constraints.

     This function calls the more general function 'quadprog'
     internally.

     See also: quadprog.


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Solve the linear least squares program
     min 0.5 sumsq(C*x - d)
     x
   ...



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lsqnonlin


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 -- Function File: lsqnonlin (FUN, X0)
 -- Function File: lsqnonlin (FUN, X0, LB, UB)
 -- Function File: lsqnonlin (FUN, X0, LB, UB, OPTIONS)
 -- Function File: [X, RESNORM, RESIDUAL, EXITFLAG, OUTPUT, LAMBDA,
          JACOBIAN] = lsqnonlin (...)
     Solve nonlinear least-squares (nonlinear data-fitting) problems
          min [EuclidianNorm(f(x))] .^ 2
           x

     FUN computes residuals from given parameters.  The initial guess of
     the parameters X0 must be provided while the bounds LB and UB) can
     be set to the empty matrix ('[]') if not given.

     'lsqnonlin' may also be called with a single structure argument
     with the fields 'fun', 'x0', 'lb', 'ub', and 'options', resembling
     the separate input arguments above.  For compatibility reasons,
     field 'fun' may also be called 'objective'.  Additionally, the
     structure must have the field 'solver', set to "lsqnonlin".

     OPTIONS can be set with 'optimset'.  Follwing Matlab compatible
     options are recognized:

     'Algorithm' String specifying backend algorithm.  Currently
     available "lm_svd_feasible" only.

     'TolFun' Minimum fractional improvement in objective function in an
     iteration (termination criterium).  Default: 1e-6.

     'TypicalX' Typical values of x.  Default: 1.

     'MaxIter' Maximum number of iterations allowed.  Default: 400.

     'Jacobian' If set to "on", the function FUN must return a second
     output containing a user-specified Jacobian.  The Jacobian is
     computed using finite differences otherwise.  Default: "off"

     'FinDiffType' "centered" or "forward" (Default) type finite
     differences estimation.

     'FinDiffRelStep' Step size factor.  The default is sqrt(eps) for
     forward finite differences, and eps^(1/3) for central finite
     differences

     'OutputFcn' One or more user-defined functions, either as a
     function handle or as a cell array of function handles that an
     optimization function calls at each iteration.  The function
     definition has the following form:

     'stop = outfun(x, optimValues, state)'

     'x' is the point computed at the current iteration.  'optimValues'
     is a structure containing data from the current iteration in the
     following fields: "iteration"- number of current iteration.
     "residual"- residuals.  'state' is the state of the algorithm:
     "init" at start, "iter" after each iteration and "done" at the end.

     'Display' String indicating the degree of verbosity.  Default:
     "off".  Currently only supported values are "off" (no messages) and
     "iter" (some messages after each iteration).

     Returned values:

     X
          Position of minimum.

     RESNORM
          Scalar value of objective as squared EuclidianNorm(f(x)).

     RESIDUAL
          Value of solution residuals f(x).

     EXITFLAG
          Status of solution:

          '0'
               Maximum number of iterations reached.

          '2'
               Change in x was less than the specified tolerance.

          '3'
               Change in the residual was less than the specified
               tolerance.

          '-1'
               Output function terminated the algorithm.

     OUTPUT
          Structure with additional information, currently the only
          field is 'iterations', the number of used iterations.

     LAMBDA
          Structure containing Lagrange multipliers at the solution X
          sepatared by constraint type (LB and UB).

     JACOBIAN
          m-by-n matrix, where JACOBIAN(I,J) is the partial derivative
          of FUN(I) with respect to X(J) Default: lsqnonlin approximates
          the Jacobian using finite differences.  If 'Jacobian' is set
          to "on" in OPTIONS then FUN must return a second argument
          providing a user-sepcified Jacobian .

     This function is a compatibility wrapper.  It calls the more
     general 'nonlin_residmin' function internally.

     See also: lsqcurvefit, nonlin_residmin, nonlin_curvefit.


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Solve nonlinear least-squares (nonlinear data-fitting) problems
     min [Euc...



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mdsmax


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MDSMAX  Multidirectional search method for direct search optimization.
        [x, fmax, nf] = MDSMAX(FUN, x0, STOPIT, SAVIT) attempts to
        maximize the function FUN, using the starting vector x0.
        The method of multidirectional search is used.
        Output arguments:
               x    = vector yielding largest function value found,
               fmax = function value at x,
               nf   = number of function evaluations.
        The iteration is terminated when either
               - the relative size of the simplex is <= STOPIT(1)
                 (default 1e-3),
               - STOPIT(2) function evaluations have been performed
                 (default inf, i.e., no limit), or
               - a function value equals or exceeds STOPIT(3)
                 (default inf, i.e., no test on function values).
        The form of the initial simplex is determined by STOPIT(4):
          STOPIT(4) = 0: regular simplex (sides of equal length, the default),
          STOPIT(4) = 1: right-angled simplex.
        Progress of the iteration is not shown if STOPIT(5) = 0 (default 1).
        If a non-empty fourth parameter string SAVIT is present, then
        `SAVE SAVIT x fmax nf' is executed after each inner iteration.
        NB: x0 can be a matrix.  In the output argument, in SAVIT saves,
            and in function calls, x has the same shape as x0.
        MDSMAX(fun, x0, STOPIT, SAVIT, P1, P2,...) allows additional
        arguments to be passed to fun, via feval(fun,x,P1,P2,...).

 This implementation uses 2n^2 elements of storage (two simplices), where x0
 is an n-vector.  It is based on the algorithm statement in [2, sec.3],
 modified so as to halve the storage (with a slight loss in readability).

 References:
 [1] V. J. Torczon, Multi-directional search: A direct search algorithm for
     parallel machines, Ph.D. Thesis, Rice University, Houston, Texas, 1989.
 [2] V. J. Torczon, On the convergence of the multidirectional search
     algorithm, SIAM J. Optimization, 1 (1991), pp. 123-145.
 [3] N. J. Higham, Optimization by direct search in matrix computations,
     SIAM J. Matrix Anal. Appl, 14(2): 317-333, 1993.
 [4] N. J. Higham, Accuracy and Stability of Numerical Algorithms,
        Second edition, Society for Industrial and Applied Mathematics,
        Philadelphia, PA, 2002; sec. 20.5.



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MDSMAX  Multidirectional search method for direct search optimization.
      ...



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nelder_mead_min


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 [x0,v,nev] = nelder_mead_min (f,args,ctl) - Nelder-Mead minimization

 Minimize 'f' using the Nelder-Mead algorithm. This function is inspired
 from the that found in the book "Numerical Recipes".

 ARGUMENTS
 ---------
 f     : string : Name of function. Must return a real value
 args  : list   : Arguments passed to f.
      or matrix : f's only argument
 ctl   : vector : (Optional) Control variables, described below
      or struct

 RETURNED VALUES
 ---------------
 x0  : matrix   : Local minimum of f
 v   : real     : Value of f in x0
 nev : number   : Number of function evaluations
 
 CONTROL VARIABLE : (optional) may be named arguments (i.e. "name",value
 ------------------ pairs), a struct, or a vector of length <= 6, where
                    NaN's are ignored. Default values are written <value>.
  OPT.   VECTOR
  NAME    POS
 ftol,f  N/A    : Stopping criterion : stop search when values at simplex
                  vertices are all alike, as tested by 

                   f > (max_i (f_i) - min_i (f_i)) /max(max(|f_i|),1)

                  where f_i are the values of f at the vertices.  <10*eps>

 rtol,r  N/A    : Stop search when biggest radius of simplex, using
                  infinity-norm, is small, as tested by :

              ctl(2) > Radius                                     <10*eps>

 vtol,v  N/A    : Stop search when volume of simplex is small, tested by
            
              ctl(2) > Vol

 crit,c ctl(1)  : Set one stopping criterion, 'ftol' (c=1), 'rtol' (c=2)
                  or 'vtol' (c=3) to the value of the 'tol' option.    <1>

 tol, t ctl(2)  : Threshold in termination test chosen by 'crit'  <10*eps>

 narg  ctl(3)  : Position of the minimized argument in args            <1>
 maxev ctl(4)  : Maximum number of function evaluations. This number <inf>
                 may be slightly exceeded.
 isz   ctl(5)  : Size of initial simplex, which is :                   <1>

                { x + e_i | i in 0..N } 
 
                Where x == args{narg} is the initial value 
                 e_0    == zeros (size (x)), 
                 e_i(j) == 0 if j != i and e_i(i) == ctl(5)
                 e_i    has same size as x

                Set ctl(5) to the distance you expect between the starting
                point and the minimum.

 rst   ctl(6)   : When a minimum is found the algorithm restarts next to
                  it until the minimum does not improve anymore. ctl(6) is
                  the maximum number of restarts. Set ctl(6) to zero if
                  you know the function is well-behaved or if you don't
                  mind not getting a true minimum.                     <0>

 verbose, v     Be more or less verbose (quiet=0)                      <0>



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 [x0,v,nev] = nelder_mead_min (f,args,ctl) - Nelder-Mead minimization



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nlinfit


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 -- Function File: nlinfit (X, Y, MODELFUN, BETA0)
 -- Function File: nlinfit (X, Y, MODELFUN, BETA0, OPTIONS)
 -- Function File: nlinfit (..., NAME, VALUE)
 -- Function File: [BETA, R, J, COVB, MSE] = nlinfit (...)
     Nonlinear Regression.

          min [EuclidianNorm (Y - modelfun (beta, X))] ^ 2
          beta

     X is a matrix of independents, Y is the observed output and
     MODELFUN is the nonlinear regression model function.  MODELFUN
     should be specified as a function handle, which accepts two inputs:
     an array of coefficients and an array of independents - in that
     order.  The first four input arguments must be provided with
     non-empty initial guess of the coefficients BETA0.  Y and X must be
     the same size as the vector (or matrix) returned by FUN.  OPTIONS
     is a structure containing estimation algorithm options.  It can be
     set using 'statset'.  Follwing Matlab compatible options are
     recognized:

     'TolFun' Minimum fractional improvement in objective function in an
     iteration (termination criterium).  Default: 1e-6.

     'MaxIter' Maximum number of iterations allowed.  Default: 400.

     'DerivStep' Step size factor.  The default is eps^(1/3) for finite
     differences gradient calculation.

     'Display' String indicating the degree of verbosity.  Default:
     "off".  Currently only supported values are "off" (no messages) and
     "iter" (some messages after each iteration).

     Optional NAME, VALUE pairs can be provided to set additional
     options.  Currently the only applicable name-value pair is
     'Weights', w, where w is the array of real positive weight factors
     for the squared residuals.

     Returned values:

     BETA
          Coefficients to best fit the nonlinear function modelfun
          (beta, X) to the observed values Y.

     R
          Value of solution residuals: 'modelfun (beta, X) - Y'.  If
          observation weights are specified then R is the array of
          weighted residuals: 'sqrt (weights) .* modelfun (beta, X) -
          Y'.

     J
          A matrix where 'J(i,j)' is the partial derivative of
          'modelfun(i)' with respect to 'beta(j)'.  If observation
          weights are specified, then J is the weighted model function
          Jacobian: 'diag (sqrt (weights)) * J'.

     COVB

          Estimated covariance matrix of the fitted coefficients.

     MSE
          Scalar valued estimate of the variance of error term.  If the
          model Jacobian is full rank, then MSE = (R' * R)/(N-p), where
          N is the number of observations and p is the number of
          estimated coefficients.

     This function is a compatibility wrapper.  It calls the more
     general 'nonlin_curvefit' and 'curvefit_stat' functions internally.

     See also: nonlin_residmin, nonlin_curvefit, residmin_stat,
     curvefit_stat.


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Nonlinear Regression.



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nmsmax


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NMSMAX  Nelder-Mead simplex method for direct search optimization.
        [x, fmax, nf] = NMSMAX(FUN, x0, STOPIT, SAVIT) attempts to
        maximize the function FUN, using the starting vector x0.
        The Nelder-Mead direct search method is used.
        Output arguments:
               x    = vector yielding largest function value found,
               fmax = function value at x,
               nf   = number of function evaluations.
        The iteration is terminated when either
               - the relative size of the simplex is <= STOPIT(1)
                 (default 1e-3),
               - STOPIT(2) function evaluations have been performed
                 (default inf, i.e., no limit), or
               - a function value equals or exceeds STOPIT(3)
                 (default inf, i.e., no test on function values).
        The form of the initial simplex is determined by STOPIT(4):
           STOPIT(4) = 0: regular simplex (sides of equal length, the default)
           STOPIT(4) = 1: right-angled simplex.
        Progress of the iteration is not shown if STOPIT(5) = 0 (default 1).
           STOPIT(6) indicates the direction (ie. minimization or 
                   maximization.) Default is 1, maximization.
                   set STOPIT(6)=-1 for minimization
        If a non-empty fourth parameter string SAVIT is present, then
        `SAVE SAVIT x fmax nf' is executed after each inner iteration.
        NB: x0 can be a matrix.  In the output argument, in SAVIT saves,
            and in function calls, x has the same shape as x0.
        NMSMAX(fun, x0, STOPIT, SAVIT, P1, P2,...) allows additional
        arguments to be passed to fun, via feval(fun,x,P1,P2,...).
 References:
 N. J. Higham, Optimization by direct search in matrix computations,
    SIAM J. Matrix Anal. Appl, 14(2): 317-333, 1993.
 C. T. Kelley, Iterative Methods for Optimization, Society for Industrial
    and Applied Mathematics, Philadelphia, PA, 1999.



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NMSMAX  Nelder-Mead simplex method for direct search optimization.
        [x...



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nonlin_curvefit


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 -- Function File: [P, FY, CVG, OUTP] = nonlin_curvefit (F, PIN, X, Y)
 -- Function File: [P, FY, CVG, OUTP] = nonlin_curvefit (F, PIN, X, Y,
          SETTINGS)
     Frontend for nonlinear fitting of values, computed by a model
     function, to observed values.

     Please refer to the description of 'nonlin_residmin'.  The
     differences to 'nonlin_residmin' are the additional arguments X
     (independent values, mostly, but not necessarily, an array of the
     same dimensions or the same number of rows as Y) and Y (array of
     observations), the returned value FY (final guess for observed
     values) instead of RESID, that the model function has a second
     obligatory argument which will be set to X and is supposed to
     return guesses for the observations (with the same dimensions), and
     that the possibly user-supplied function for the jacobian of the
     model function has also a second obligatory argument which will be
     set to X.

     Also, if the setting 'user_interaction' is given, additional
     information is passed to these functions.  Type 'optim_doc ("Common
     optimization options")' for this setting.

     See also: nonlin_residmin.


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Frontend for nonlinear fitting of values, computed by a model function,
to ob...



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nonlin_min


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 -- Function File: [P, OBJF, CVG, OUTP] = nonlin_min (F, PIN)
 -- Function File: [P, OBJF, CVG, OUTP] = nonlin_min (F, PIN, SETTINGS)
     Frontend for nonlinear minimization of a scalar objective function.

     The functions supplied by the user have a minimal interface; any
     additionally needed constants can be supplied by wrapping the user
     functions into anonymous functions.

     The following description applies to usage with vector-based
     parameter handling.  Differences in usage for structure-based
     parameter handling will be explained separately.

     F: objective function.  It gets a column vector of real parameters
     as argument.  In gradient determination, this function may be
     called with an informational second argument, whose content depends
     on the function for gradient determination.

     PIN: real column vector of initial parameters.

     SETTINGS: structure whose fields stand for optional settings
     referred to below.  The fields can be set by 'optimset()'.

     The returned values are the column vector of final parameters P,
     the final value of the objective function OBJF, an integer CVG
     indicating if and how optimization succeeded or failed, and a
     structure OUTP with additional information, curently with possible
     fields: 'niter', the number of iterations, 'nobjf', the number of
     objective function calls (indirect calls by gradient function not
     counted), 'lambda', the lambda of constraints at the result, and
     'user_interaction', information on user stops (see settings).  The
     backend may define additional fields.  CVG is greater than zero for
     success and less than or equal to zero for failure; its possible
     values depend on the used backend and currently can be '0' (maximum
     number of iterations exceeded), '1' (success without further
     specification of criteria), '2' (parameter change less than
     specified precision in two consecutive iterations), '3'
     (improvement in objective function less than specified), '-1'
     (algorithm aborted by a user function), or '-4' (algorithm got
     stuck).

     For settings, type 'optim_doc ("nonlin_min")'.

     For desription of structure-based parameter handling, type
     'optim_doc ("parameter structures")'.

     For description of individual backends, type 'optim_doc ("scalar
     optimization")' and choose the backend in the menu.


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Frontend for nonlinear minimization of a scalar objective function.



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nonlin_residmin


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 -- Function File: [P, RESID, CVG, OUTP] = nonlin_residmin (F, PIN)
 -- Function File: [P, RESID, CVG, OUTP] = nonlin_residmin (F, PIN,
          SETTINGS)
     Frontend for nonlinear minimization of residuals returned by a
     model function.

     The functions supplied by the user have a minimal interface; any
     additionally needed constants (e.g.  observed values) can be
     supplied by wrapping the user functions into anonymous functions.

     The following description applies to usage with vector-based
     parameter handling.  Differences in usage for structure-based
     parameter handling will be explained separately.

     F: function returning the array of residuals.  It gets a column
     vector of real parameters as argument.  In gradient determination,
     this function may be called with an informational second argument,
     whose content depends on the function for gradient determination.

     PIN: real column vector of initial parameters.

     SETTINGS: structure whose fields stand for optional settings
     referred to below.  The fields can be set by 'optimset()'.

     The returned values are the column vector of final parameters P,
     the final array of residuals RESID, an integer CVG indicating if
     and how optimization succeeded or failed, and a structure OUTP with
     additional information, curently with the fields: 'niter', the
     number of iterations and 'user_interaction', information on user
     stops (see settings).  The backend may define additional fields.
     If the backend supports it, OUTP has a field 'lambda' with
     determined Lagrange multipliers of any constraints, seperated into
     subfields 'lower' and 'upper' for bounds, 'eqlin' and 'ineqlin' for
     linear equality and inequality constraints (except bounds),
     respectively, and 'eqnonlin' and 'ineqnonlin' for general equality
     and inequality constraints, respectively.  CVG is greater than zero
     for success and less than or equal to zero for failure; its
     possible values depend on the used backend and currently can be '0'
     (maximum number of iterations exceeded), '2' (parameter change less
     than specified precision in two consecutive iterations), or '3'
     (improvement in objective function - e.g.  sum of squares - less
     than specified), or '-1' (algorithm aborted by a user function).

     For settings, type 'optim_doc ("nonlin_residmin")'.

     For desription of structure-based parameter handling, type
     'optim_doc ("parameter structures")'.

     For description of individual backends (currently only one), type
     'optim_doc ("residual optimization")' and choose the backend in the
     menu.

     See also: nonlin_curvefit.


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Frontend for nonlinear minimization of residuals returned by a model
function.



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nrm


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 -- Function File: XMIN = nrm (F,X0)
     Using X0 as a starting point find a minimum of the scalar function
     F.  The Newton-Raphson method is used.


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Using X0 as a starting point find a minimum of the scalar function F.



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optim_doc


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 -- Function File: optim_doc ()
 -- Function File: optim_doc (KEYWORD)
     Show optim package documentation.

     Runs the info viewer Octave is configured with on the documentation
     in info format of the installed optim package.  Without argument,
     the top node of the documentation is displayed.  With an argument,
     the respective index entry is searched for and its node displayed.


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Show optim package documentation.



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optim_problems


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 Problems for testing optimizers. Documentation is in the code.



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 Problems for testing optimizers.



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poly_2_ex


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  ex = poly_2_ex (l, f)       - Extremum of a 1-var deg-2 polynomial

 l  : 3 : Values of variable at which polynomial is known.
 f  : 3 : f(i) = Value of the degree-2 polynomial at l(i).
 
 ex : 1 : Value for which f reaches its extremum
 
 Assuming that f(i) = a*l(i)^2 + b*l(i) + c = P(l(i)) for some a, b, c,
 ex is the extremum of the polynome P.

 This function will be removed from future versions of the optim
 package since it is not related to optimization.



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  ex = poly_2_ex (l, f)       - Extremum of a 1-var deg-2 polynomial



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polyconf


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 [y,dy] = polyconf(p,x,s)

   Produce prediction intervals for the fitted y. The vector p 
   and structure s are returned from polyfit or wpolyfit. The 
   x values are where you want to compute the prediction interval.

 polyconf(...,['ci'|'pi'])

   Produce a confidence interval (range of likely values for the
   mean at x) or a prediction interval (range of likely values 
   seen when measuring at x).  The prediction interval tells
   you the width of the distribution at x.  This should be the same
   regardless of the number of measurements you have for the value
   at x.  The confidence interval tells you how well you know the
   mean at x.  It should get smaller as you increase the number of
   measurements.  Error bars in the physical sciences usually show 
   a 1-alpha confidence value of erfc(1/sqrt(2)), representing
   one standandard deviation of uncertainty in the mean.

 polyconf(...,1-alpha)

   Control the width of the interval. If asking for the prediction
   interval 'pi', the default is .05 for the 95% prediction interval.
   If asking for the confidence interval 'ci', the default is
   erfc(1/sqrt(2)) for a one standard deviation confidence interval.

 Example:
  [p,s] = polyfit(x,y,1);
  xf = linspace(x(1),x(end),150);
  [yf,dyf] = polyconf(p,xf,s,'ci');
  plot(xf,yf,'g-;fit;',xf,yf+dyf,'g.;;',xf,yf-dyf,'g.;;',x,y,'xr;data;');
  plot(x,y-polyval(p,x),';residuals;',xf,dyf,'g-;;',xf,-dyf,'g-;;');



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 [y,dy] = polyconf(p,x,s)



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polyfitinf


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 function [A,REF,HMAX,H,R,EQUAL] = polyfitinf(M,N,K,X,Y,EPSH,MAXIT,REF0)

   Best polynomial approximation in discrete uniform norm

   INPUT VARIABLES:

   M       : degree of the fitting polynomial
   N       : number of data points
   X(N)    : x-coordinates of data points
   Y(N)    : y-coordinates of data points
   K       : character of the polynomial:
                   K = 0 : mixed parity polynomial
                   K = 1 : odd polynomial  ( X(1) must be >  0 )
                   K = 2 : even polynomial ( X(1) must be >= 0 )
   EPSH    : tolerance for leveling. A useful value for 24-bit
             mantissa is EPSH = 2.0E-7
   MAXIT   : upper limit for number of exchange steps
   REF0(M2): initial alternating set ( N-vector ). This is an
             OPTIONAL argument. The length M2 is given by:
                   M2 = M + 2                      , if K = 0
                   M2 = integer part of (M+3)/2    , if K = 1
                   M2 = 2 + M/2 (M must be even)   , if K = 2

   OUTPUT VARIABLES:

   A       : polynomial coefficients of the best approximation
             in order of increasing powers:
                   p*(x) = A(1) + A(2)*x + A(3)*x^2 + ...
   REF     : selected alternating set of points
   HMAX    : maximum deviation ( uniform norm of p* - f )
   H       : pointwise approximation errors
	R		: total number of iterations
   EQUAL   : success of failure of algorithm
                   EQUAL=1 :  succesful
                   EQUAL=0 :  convergence not acheived
                   EQUAL=-1:  input error
                   EQUAL=-2:  algorithm failure

   Relies on function EXCH, provided below.

   Example: 
   M = 5; N = 10000; K = 0; EPSH = 10^-12; MAXIT = 10;
   X = linspace(-1,1,N);   % uniformly spaced nodes on [-1,1]
   k=1; Y = abs(X).^k;     % the function Y to approximate
   [A,REF,HMAX,H,R,EQUAL] = polyfitinf(M,N,K,X,Y,EPSH,MAXIT);
   p = polyval(A,X); plot(X,Y,X,p) % p is the best approximation

   Note: using an even value of M, e.g., M=2, in the example above, makes
   the algorithm to fail with EQUAL=-2, because of collocation, which
   appears because both the appriximating function and the polynomial are
   even functions. The way aroung it is to approximate only the right half
   of the function, setting K = 2 : even polynomial. For example: 

 N = 10000; K = 2; EPSH = 10^-12; MAXIT = 10;  X = linspace(0,1,N);
 for i = 1:2
     k = 2*i-1; Y = abs(X).^k;
     for j = 1:4
         M = 2^j;
         [~,~,HMAX] = polyfitinf(M,N,K,X,Y,EPSH,MAXIT);
         approxerror(i,j) = HMAX;
     end
 end
 disp('Table 3.1 from Approximation theory and methods, M.J.D.POWELL, p. 27');
 disp(' ');
 disp('            n          K=1          K=3'); 
 disp(' '); format short g;
 disp([(2.^(1:4))' approxerror']);

   ALGORITHM:

   Computation of the polynomial that best approximates the data (X,Y)
   in the discrete uniform norm, i.e. the polynomial with the  minimum
   value of max{ | p(x_i) - y_i | , x_i in X } . That polynomial, also
   known as minimax polynomial, is obtained by the exchange algorithm,
   a finite iterative process requiring, at most,
      n
    (   ) iterations ( usually p = M + 2. See also function EXCH ).
      p
   since this number can be very large , the routine  may not converge
   within MAXIT iterations . The  other possibility of  failure occurs
   when there is insufficient floating point precision  for  the input
   data chosen.

   CREDITS: This routine was developed and modified as 
   computer assignments in Approximation Theory courses by 
   Prof. Andrew Knyazev, University of Colorado Denver, USA.

   Team Fall 98 (Revision 1.0):
           Chanchai Aniwathananon
           Crhistopher Mehl
           David A. Duran
           Saulo P. Oliveira

   Team Spring 11 (Revision 1.1): Manuchehr Aminian

   The algorithm and the comments are based on a FORTRAN code written
   by Joseph C. Simpson. The code is available on Netlib repository:
   http://www.netlib.org/toms/501
   See also: Communications of the ACM, V14, pp.355-356(1971)

   NOTES:

   1) A may contain the collocation polynomial
   2) If MAXIT is exceeded, REF contains a new reference set
   3) M, EPSH and REF can be altered during the execution
   4) To keep consistency to the original code , EPSH can be
   negative. However, the use of REF0 is *NOT* determined by
   EPSH< 0, but only by its inclusion as an input parameter.

   Some parts of the code can still take advantage of vectorization.  

   Revision 1.0 from 1998 is a direct human translation of 
   the FORTRAN code http://www.netlib.org/toms/501
   Revision 1.1 is a clean-up and technical update.  
   Tested on MATLAB Version 7.11.0.584 (R2010b) and 
   GNU Octave Version 3.2.4



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 function [A,REF,HMAX,H,R,EQUAL] = polyfitinf(M,N,K,X,Y,EPSH,MAXIT,REF0)

 ...



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powell


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 -- Function File: [P, OBJ_VALUE, CONVERGENCE, ITERS, NEVS] = powell (F,
          P0, CONTROL)
     Multidimensional minimization (direction-set method).  Implements a
     direction-set (Powell's) method for multidimensional minimization
     of a function without calculation of the gradient [1, 2]

     Arguments
     ---------

        * F: name of function to minimize (string or handle), which
          should accept one input variable (see example for how to pass
          on additional input arguments)

        * P0: An initial value of the function argument to minimize

        * OPTIONS: an optional structure, which can be generated by
          optimset, with some or all of the following fields:
             - MaxIter: maximum iterations (positive integer, or -1 or
               Inf for unlimited (default))
             - TolFun: minimum amount by which function value must
               decrease in each iteration to continue (default is 1E-8)
             - MaxFunEvals: maximum function evaluations (positive
               integer, or -1 or Inf for unlimited (default))
             - SearchDirections: an n*n matrix whose columns contain the
               initial set of (presumably orthogonal) directions to
               minimize along, where n is the number of elements in the
               argument to be minimized for; or an n*1 vector of
               magnitudes for the initial directions (defaults to the
               set of unit direction vectors)

     Examples
     --------

          y = @(x, s) x(1) ^ 2 + x(2) ^ 2 + s;
          o = optimset('MaxIter', 100, 'TolFun', 1E-10);
          s = 1;
          [x_optim, y_min, conv, iters, nevs] = powell(@(x) y(x, s), [1 0.5], o); %pass y wrapped in an anonymous function so that all other arguments to y, which are held constant, are set
          %should return something like x_optim = [4E-14 3E-14], y_min = 1, conv = 1, iters = 2, nevs = 24


     Returns:
     --------

        * P: the minimizing value of the function argument
        * OBJ_VALUE: the value of F() at P
        * CONVERGENCE: 1 if normal convergence, 0 if not
        * ITERS: number of iterations performed
        * NEVS: number of function evaluations

     References
     ----------

       1. Powell MJD (1964), An efficient method for finding the minimum
          of a function of several variables without calculating
          derivatives, 'Computer Journal', 7 :155-162

       2. Press, WH; Teukolsky, SA; Vetterling, WT; Flannery, BP (1992).
          'Numerical Recipes in Fortran: The Art of Scientific
          Computing' (2nd Ed.).  New York: Cambridge University Press
          (Section 10.5)


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Multidimensional minimization (direction-set method).



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quadprog


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 -- Function File: quadprog (H, F)
 -- Function File: quadprog (H, F, A, B)
 -- Function File: quadprog (H, F, A, B, AEQ, BEQ)
 -- Function File: quadprog (H, F, A, B, AEQ, BEQ, LB, UB)
 -- Function File: quadprog (H, F, A, B, AEQ, BEQ, LB, UB, X0)
 -- Function File: quadprog (H, F, A, B, AEQ, BEQ, LB, UB, X0, OPTIONS)
 -- Function File: [X, FVAL, EXITFLAG, OUTPUT, LAMBDA] = quadprog (...)
     Solve the quadratic program
          min 0.5 x'*H*x + x'*f
           x
     subject to
          A*X <= B,
          AEQ*X = BEQ,
          LB <= X <= UB.

     The initial guess X0 and the constraint arguments (A and B, AEQ and
     BEQ, LB and UB) can be set to the empty matrix ('[]') if not given.
     If the initial guess X0 is feasible the algorithm is faster.

     OPTIONS can be set with 'optimset', currently the only option is
     'MaxIter', the maximum number of iterations (default: 200).

     Returned values:

     X
          Position of minimum.

     FVAL
          Value at the minimum.

     EXITFLAG
          Status of solution:

          '0'
               Maximum number of iterations reached.

          '-2'
               The problem is infeasible.

          '-3'
               The problem is not convex and unbounded

          '1'
               Global solution found.

          '4'
               Local solution found.

     OUTPUT
          Structure with additional information, currently the only
          field is 'iterations', the number of used iterations.

     LAMBDA
          Structure containing Lagrange multipliers corresponding to the
          constraints.  For equality constraints, the sign of the
          multipliers is chosen to satisfy the equation
               0.5 H * x + f + A' * lambda_inequ + Aeq' * lambda_equ = 0 .
          If lower and upper bounds are equal, or so close to each other
          that they are considered equal by the algorithm, only one of
          these bounds is considered active when computing the solution,
          and a positive lambda will be placed only at this bound.

     This function calls Octave's '__qp__' back-end algorithm
     internally.


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Solve the quadratic program
     min 0.5 x'*H*x + x'*f
      x
   subject to
...



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residmin_stat


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 -- Function File: INFO = residmin_stat (F, P, SETTINGS)
     Frontend for computation of statistics for a residual-based
     minimization.

     SETTINGS is a structure whose fields can be set by 'optimset'.
     With SETTINGS the computation of certain statistics is requested by
     setting the fields 'ret_<name_of_statistic>' to 'true'.  The
     respective statistics will be returned in a structure as fields
     with name '<name_of_statistic>'.  Depending on the requested
     statistic and on the additional information provided in SETTINGS, F
     and P may be empty.  Otherwise, F is the model function of an
     optimization (the interface of F is described e.g.  in
     'nonlin_residmin', please see there), and P is a real column vector
     with parameters resulting from the same optimization.

     Currently, the following statistics (or general information) can be
     requested:

     'dfdp': Jacobian of model function with respect to parameters.

     'covd': Covariance matrix of data (typically guessed by applying a
     factor to the covariance matrix of the residuals).

     'covp': Covariance matrix of final parameters.

     'corp': Correlation matrix of final parameters.

     For further settings, type 'optim_doc ("residmin_stat")'.

     For desription of structure-based parameter handling, type
     'optim_doc ("parameter structures")'.

     For backend information, type 'optim_doc ("residual optimization")'
     and choose the backends type in the menu.

     See also: curvefit_stat.


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Frontend for computation of statistics for a residual-based
minimization.



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rosenbrock


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 Rosenbrock function - used to create example obj. fns.

 Function value and gradient vector of the rosenbrock function
 The minimizer is at the vector (1,1,..,1),
 and the minimized value is 0.



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 Rosenbrock function - used to create example obj. fns.



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statget


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 -- Function File: statget (OPTIONS, PARNAME)
 -- Function File: statget (OPTIONS, PARNAME, DEFAULT)
     Return the specific option PARNAME from the statistics options
     structure OPTIONS created by 'statset'.

     If PARNAME is not defined then return DEFAULT if supplied,
     otherwise return an empty matrix.

     See also: statset.


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Return the specific option PARNAME from the statistics options structure
OPTI...



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statset


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 -- Function File: statset ()
 -- Function File: OPTIONS = statset ()
 -- Function File: OPTIONS = statset (PAR, VAL, ...)
 -- Function File: OPTIONS = statset (OLD, PAR, VAL, ...)
 -- Function File: OPTIONS = statset (OLD, NEW)
     Create options structure for statistics functions.

     When called without any input or output arguments, 'statset' prints
     a list of all valid statistics parameters.

     When called with one output and no inputs, return an options
     structure with all valid option parameters initialized to '[]'.

     When called with a list of parameter/value pairs, return an options
     structure with only the named parameters initialized.

     When the first input is an existing options structure OLD, the
     values are updated from either the PAR/VAL list or from the options
     structure NEW.

     Please see individual statistics functions for valid settings.

     See also: statget.


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Create options structure for statistics functions.



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test_min_1


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 [x,v,niter] = feval (optim_func, "testfunc","dtestf", xinit);



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 [x,v,niter] = feval (optim_func, "testfunc","dtestf", xinit);




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test_min_2


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# length: 60
 [xlev,vlev,nlev] = feval(optim_func, "ff", "dff", xinit) ;



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# length: 60
 [xlev,vlev,nlev] = feval(optim_func, "ff", "dff", xinit) ;




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test_min_3


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 [xlev,vlev,nlev] = feval (optim_func, "ff", "dff", xinit, "extra", extra) ;
 [xlev,vlev,nlev] = feval \
     (optim_func, "ff", "dff", list (xinit, obsmat, obses));



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 [xlev,vlev,nlev] = feval (optim_func, "ff", "dff", xinit, "extra", extra) ;
...



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test_min_4


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 Plain run, just to make sure ######################################
 Minimum wrt 'x' is y0
 [xlev,vlev,nlev] = feval (optim_func, "ff", "dff", {x0,y0,1});
 ctl.df = "dff";



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 Plain run, just to make sure ######################################
 Minimum...



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test_nelder_mead_min_1


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# length: 29
 Use vanilla nelder_mead_min



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# length: 29
 Use vanilla nelder_mead_min




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test_nelder_mead_min_2


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# length: 70

 Test using volume #################################################



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 Test using volume #################################################




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test_wpolyfit


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          x         y          dy



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          x         y          dy




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vfzero


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 -- Function File: vfzero (FUN, X0)
 -- Function File: vfzero (FUN, X0, OPTIONS)
 -- Function File: [X, FVAL, INFO, OUTPUT] = vfzero (...)
     A variant of 'fzero'.  Finds a zero of a vector-valued multivariate
     function where each output element only depends on the input
     element with the same index (so the Jacobian is diagonal).

     FUN should be a handle or name of a function returning a column
     vector.  X0 should be a two-column matrix, each row specifying two
     points which bracket a zero of the respective output element of
     FUN.

     If X0 is a single-column matrix then several nearby and distant
     values are probed in an attempt to obtain a valid bracketing.  If
     this is not successful, the function fails.  OPTIONS is a structure
     specifying additional options.  Currently, 'vfzero' recognizes
     these options: '"FunValCheck"', '"OutputFcn"', '"TolX"',
     '"MaxIter"', '"MaxFunEvals"'.  For a description of these options,
     see optimset.

     On exit, the function returns X, the approximate zero and FVAL, the
     function value thereof.  INFO is a column vector of exit flags that
     can have these values:

        * 1 The algorithm converged to a solution.

        * 0 Maximum number of iterations or function evaluations has
          been reached.

        * -1 The algorithm has been terminated from user output
          function.

        * -5 The algorithm may have converged to a singular point.

     OUTPUT is a structure containing runtime information about the
     'fzero' algorithm.  Fields in the structure are:

        * iterations Number of iterations through loop.

        * nfev Number of function evaluations.

        * bracketx A two-column matrix with the final bracketing of the
          zero along the x-axis.

        * brackety A two-column matrix with the final bracketing of the
          zero along the y-axis.


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A variant of 'fzero'.



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wpolyfit


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 -- Function File: [P, S] = wpolyfit (X, Y, DY, N)
     Return the coefficients of a polynomial P(X) of degree N that
     minimizes 'sumsq (p(x(i)) - y(i))', to best fit the data in the
     least squares sense.  The standard error on the observations Y if
     present are given in DY.

     The returned value P contains the polynomial coefficients suitable
     for use in the function polyval.  The structure S returns
     information necessary to compute uncertainty in the model.

     To compute the predicted values of y with uncertainty use
          [y,dy] = polyconf(p,x,s,'ci');
     You can see the effects of different confidence intervals and
     prediction intervals by calling the wpolyfit internal plot function
     with your fit:
          feval('wpolyfit:plt',x,y,dy,p,s,0.05,'pi')
     Use DY=[] if uncertainty is unknown.

     You can use a chi^2 test to reject the polynomial fit:
          p = 1-chi2cdf(s.normr^2,s.df);
     p is the probability of seeing a chi^2 value higher than that which
     was observed assuming the data are normally distributed around the
     fit.  If p < 0.01, you can reject the fit at the 1% level.

     You can use an F test to determine if a higher order polynomial
     improves the fit:
          [poly1,S1] = wpolyfit(x,y,dy,n);
          [poly2,S2] = wpolyfit(x,y,dy,n+1);
          F = (S1.normr^2 - S2.normr^2)/(S1.df-S2.df)/(S2.normr^2/S2.df);
          p = 1-f_cdf(F,S1.df-S2.df,S2.df);
     p is the probability of observing the improvement in chi^2 obtained
     by adding the extra parameter to the fit.  If p < 0.01, you can
     reject the lower order polynomial at the 1% level.

     You can estimate the uncertainty in the polynomial coefficients
     themselves using
          dp = sqrt(sumsq(inv(s.R'))'/s.df)*s.normr;
     but the high degree of covariance amongst them makes this a
     questionable operation.

 -- Function File: [P, S, MU] = wpolyfit (...)

     If an additional output 'mu = [mean(x),std(x)]' is requested then
     the X values are centered and normalized prior to computing the
     fit.  This will give more stable numerical results.  To compute a
     predicted Y from the returned model use 'y = polyval(p,
     (x-mu(1))/mu(2)'

 -- Function File: wpolyfit (...)

     If no output arguments are requested, then wpolyfit plots the data,
     the fitted line and polynomials defining the standard error range.

     Example
          x = linspace(0,4,20);
          dy = (1+rand(size(x)))/2;
          y = polyval([2,3,1],x) + dy.*randn(size(x));
          wpolyfit(x,y,dy,2);

 -- Function File: wpolyfit (..., 'origin')

     If 'origin' is specified, then the fitted polynomial will go
     through the origin.  This is generally ill-advised.  Use with
     caution.

     Hocking, RR (2003).  Methods and Applications of Linear Models.
     New Jersey: John Wiley and Sons, Inc.

     See also: polyfit.

     See also: polyconf.


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Return the coefficients of a polynomial P(X) of degree N that minimizes
'sums...



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wrap_f_dfdp


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 [ret1, ret2] = wrap_f_dfdp (f, dfdp, varargin)

 f and dftp should be the objective function (or "model function" in
 curve fitting) and its jacobian, respectively, of an optimization
 problem. ret1: f (varagin{:}), ret2: dfdp (varargin{:}). ret2 is
 only computed if more than one output argument is given. This
 manner of calling f and dfdp is needed by some optimization
 functions.



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 [ret1, ret2] = wrap_f_dfdp (f, dfdp, varargin)



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wsolve


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 [x,s] = wsolve(A,y,dy)

 Solve a potentially over-determined system with uncertainty in
 the values. 

     A x = y +/- dy

 Use QR decomposition for increased accuracy.  Estimate the 
 uncertainty for the solution from the scatter in the data.

 The returned structure s contains

    normr = sqrt( A x - y ), weighted by dy
    R such that R'R = A'A
    df = n-p, n = rows of A, p = columns of A

 See polyconf for details on how to use s to compute dy.
 The covariance matrix is inv(R'*R).  If you know that the
 parameters are independent, then uncertainty is given by
 the diagonal of the covariance matrix, or 

    dx = sqrt(N*sumsq(inv(s.R'))')

 where N = normr^2/df, or N = 1 if df = 0.

 Example 1: weighted system

    A=[1,2,3;2,1,3;1,1,1]; xin=[1;2;3]; 
    dy=[0.2;0.01;0.1]; y=A*xin+randn(size(dy)).*dy;
    [x,s] = wsolve(A,y,dy);
    dx = sqrt(sumsq(inv(s.R'))');
    res = [xin, x, dx]

 Example 2: weighted overdetermined system  y = x1 + 2*x2 + 3*x3 + e

    A = fullfact([3,3,3]); xin=[1;2;3];
    y = A*xin; dy = rand(size(y))/50; y+=dy.*randn(size(y));
    [x,s] = wsolve(A,y,dy);
    dx = s.normr*sqrt(sumsq(inv(s.R'))'/s.df);
    res = [xin, x, dx]

 Note there is a counter-intuitive result that scaling the
 uncertainty in the data does not affect the uncertainty in
 the fit.  Indeed, if you perform a monte carlo simulation
 with x,y datasets selected from a normal distribution centered
 on y with width 10*dy instead of dy you will see that the
 variance in the parameters indeed increases by a factor of 100.
 However, if the error bars really do increase by a factor of 10
 you should expect a corresponding increase in the scatter of 
 the data, which will increase the variance computed by the fit.



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 [x,s] = wsolve(A,y,dy)





