Provided by: pdl_2.084-1_amd64 bug

NAME

       PDL::Fit::Polynomial - routines for fitting with polynomials

DESCRIPTION

       This module contains routines for doing simple polynomial fits to data

SYNOPSIS

           $yfit = fitpoly1d $data;

FUNCTIONS

   fitpoly1d
       Fit 1D polynomials to data using min chi^2 (least squares)

        Usage: ($yfit, [$coeffs]) = fitpoly1d [$xdata], $data, $order, [Options...]

         Signature: (x(n); y(n); [o]yfit(n); [o]coeffs(order))

       Uses a standard matrix inversion method to do a least squares/min chi^2 polynomial fit to
       data. Order=2 is a linear fit (two parameters).

       Returns the fitted data and optionally the coefficients.

       One can broadcast over extra dimensions to do multiple fits (except the order can not be
       broadcasted over - i.e. it must be one fixed scalar number like "4").

       The data is normalised internally to avoid overflows (using the mean of the abs value)
       which are common in large polynomial series but the returned fit, coeffs are in
       unnormalised units.

         $yfit = fitpoly1d $data,2; # Least-squares line fit
         ($yfit, $coeffs) = fitpoly1d $x, $y, 4; # Fit a cubic

         $fitimage = fitpoly1d $image,3  # Fit a quadratic to each row of an image

         $myfit = fitpoly1d $line, 2, {Weights => $w}; # Weighted fit

         Options:
            Weights    Weights to use in fit, e.g. 1/$sigma**2 (default=1)

BUGS

       May not work too well for data with large dynamic range.

SEE ALSO

       "polyfit" in PDL::Slatec

AUTHOR

       This file copyright (C) 1999, Karl Glazebrook (kgb@aaoepp.aao.gov.au).  All rights
       reserved. There is no warranty. You are allowed to redistribute this software
       documentation under certain conditions. For details, see the file COPYING in the PDL
       distribution. If this file is separated from the PDL distribution, the copyright notice
       should be included in the file.