AI::Categorizer::FeatureVector - Features vs. Values
my $f1 = new AI::Categorizer::FeatureVector (features => {howdy => 2, doody => 3}); my $f2 = new AI::Categorizer::FeatureVector (features => {doody => 1, whopper => 2}); @names = $f1->names; $x = $f1->length; $x = $f1->sum; $x = $f1->includes('howdy'); $x = $f1->value('howdy'); $x = $f1->dot($f2); $f3 = $f1->clone; $f3 = $f1->intersection($f2); $f3 = $f1->add($f2); $h = $f1->as_hash; $h = $f1->as_boolean_hash; $f1->normalize;
This class implements a "feature vector", which is a flat data structure indicating the values associated with a set of features. At its base level, a FeatureVector usually represents the set of words in a document, with the value for each feature indicating the number of times each word appears in the document. However, the values are arbitrary so they can represent other quantities as well, and FeatureVectors may also be combined to represent the features of multiple documents.
Ken Williams, ken@mathforum.org
Copyright 2000-2003 Ken Williams. All rights reserved.
This library is free software; you can redistribute it and/or modify it under the same terms as Perl itself.
AI::Categorizer(3), Storable(3)
To install AI::Categorizer, copy and paste the appropriate command in to your terminal.
cpanm
cpanm AI::Categorizer
CPAN shell
perl -MCPAN -e shell install AI::Categorizer
For more information on module installation, please visit the detailed CPAN module installation guide.