Provided by: libpdl-filter-perl_2.097-1_all 

NAME
PDL::Filter::LinPred - Linear predictive filtering
SYNOPSIS
$x = PDL::Filter::LinPred->new(
{NLags => 10,
LagInterval => 2,
LagsBehind => 2,
Data => $dat});
($pd,$corrslic) = $x->predict($dat);
DESCRIPTION
A filter by doing linear prediction: tries to predict the next value in a data stream as accurately as
possible. The filtered data is the predicted value. The parameters are
NLags Number of time lags used for prediction
LagInterval
How many points each lag should be
LagsBehind
If, for some strange reason, you wish to predict not the next but the one after that (i.e.
usually f(t) is predicted from f(t-1) and f(t-2) etc., but with LagsBehind => 2, f(t) is
predicted from f(t-2) and f(t-3)).
Data The input data, which may contain other dimensions past the first (time). The extraneous
dimensions are assumed to represent epochs so the data is just concatenated.
AutoCovar
As an alternative to Data, you can just give the temporal autocorrelation function.
Smooth Don't do prediction or filtering but smoothing.
The method predict gives a prediction for some data plus a corresponding slice of the data, if evaluated
in list context. This slice is given so that you may, if you wish, easily plot them atop each other.
The rest of the documentation is under lazy evaluation.
AUTHOR
Copyright (C) Tuomas J. Lukka 1997. 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.
perl v5.40.0 2025-01-10 LinPred(3pm)