Algorithm-CurveFit-Simple
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bin/curvefit view on Meta::CPAN
Options and their defaults, if any:
--time-limit=3 Maximum number of seconds to spend calculating best fit
--iterations=# Maximum number of iterations to spend calculating best fit (default is to use a time limit)
--terms=3 Number of terms in polynomial, max 10
--inv Invert the sense of the fit to f(y) = x
--impl-lang=perl Language used for output implementation: perl, C
--impl-name=x2y Name of function in output implementation
--bounds-check Implementation will check for out-of-bounds input
--round-result Implementation will round output to nearest integer
--suppress-includes (C only) Do not put #include directives in output implementation
--quiet Do not write supplementary information to stderr
--profile Dump %STATS_H to stderr as json
See also: Algorithm::CurveFit::Simple
USAGE
exit(0);
}
=head1 NAME
curvefit - Fit a polynomial to data points
=head1 SYNOPSIS
bin/curvefit view on Meta::CPAN
--time-limit=3 Maximum number of seconds to spend calculating best fit
--iterations=# Maximum number of iterations to spend calculating best fit (default is to use a time limit)
--terms=3 Number of terms in polynomial, max 10
--inv Invert the sense of the fit to f(y) = x
--impl-lang=perl Language used for output implementation: perl, C
--impl-name=x2y Name of function in output implementation
--bounds-check Implementation will check for out-of-bounds input
--round-result Implementation will round output to nearest integer
--suppress-includes (C only) Do not put #include directives in output implementation
--quiet Do not write supplementary information to stderr
--profile Dump %STATS_H to STDERR as json
=head1 DESCRIPTION
This is a thin wrapper around L<Algorithm::CurveFit::Simple>, which is in turn a convenience wrapper around L<Algorithm::CurveFit>.
Given a set of x,y data pairs on STDIN, it will generate a polynomial formula f(x) = y which fits that data, and write a source code implementation of that formula to STDOUT.
Additionally it will write a maximum deviation and average deviation to STDERR. Closer to 1.0 is better. Play with --terms=# until these deviations are as close to 1.0 as possible, and beware overfitting. Use --quiet to suppress this information.
( run in 1.262 second using v1.01-cache-2.11-cpan-49f99fa48dc )