- added a vocab param to filter with in extract features
- added some feature probability methods
- added fisher methods
See commit history
Classifier is a general module to allow Bayesian and other types of classifications.
Added the ability to pass word hashes directly rather than passing strings that will be split. Details in lib/classifier/bayes.rb.
- http://rubyforge.org/projects/classifier
- gem install classifier
- svn co http://rufy.com/svn/classifier/trunk
If you install Classifier from source, you'll need to install Martin Porter's stemmer algorithm with RubyGems as follows: gem install stemmer
If you would like to speed up LSI classification by at least 10x, please install the following libraries: GNU GSL:: http://www.gnu.org/software/gsl rb-gsl:: http://rb-gsl.rubyforge.org
Notice that LSI will work without these libraries, but as soon as they are installed, Classifier will make use of them. No configuration changes are needed, we like to keep things ridiculously easy for you.
A Bayesian classifier by Lucas Carlson. Bayesian Classifiers are accurate, fast, and have modest memory requirements.
require 'classifier'
b = Classifier::Bayes.new 'Interesting', 'Uninteresting'
b.train_interesting "here are some good words. I hope you love them"
b.train_uninteresting "here are some bad words, I hate you"
b.classify "I hate bad words and you" # returns 'Uninteresting'
require 'madeleine'
m = SnapshotMadeleine.new("bayes_data") {
Classifier::Bayes.new 'Interesting', 'Uninteresting'
}
m.system.train_interesting "here are some good words. I hope you love them"
m.system.train_uninteresting "here are some bad words, I hate you"
m.take_snapshot
m.system.classify "I love you" # returns 'Interesting'
Using Madeleine, your application can persist the learned data over time.
=== Bayesian Classification
- http://www.process.com/precisemail/bayesian_filtering.htm
- http://en.wikipedia.org/wiki/Bayesian_filtering
- http://www.paulgraham.com/spam.html
== LSI A Latent Semantic Indexer by David Fayram. Latent Semantic Indexing engines are not as fast or as small as Bayesian classifiers, but are more flexible, providing fast search and clustering detection as well as semantic analysis of the text that theoretically simulates human learning.
=== Usage require 'classifier' lsi = Classifier::LSI.new strings = [ ["This text deals with dogs. Dogs.", :dog], ["This text involves dogs too. Dogs! ", :dog], ["This text revolves around cats. Cats.", :cat], ["This text also involves cats. Cats!", :cat], ["This text involves birds. Birds.",:bird ]] strings.each {|x| lsi.add_item x.first, x.last}
lsi.search("dog", 3)
lsi.find_related(strings[2], 2)
lsi.classify "This text is also about dogs!"
Please see the Classifier::LSI documentation for more information. It is possible to index, search and classify with more than just simple strings.
=== Latent Semantic Indexing
- http://www.c2.com/cgi/wiki?LatentSemanticIndexing
- http://www.chadfowler.com/index.cgi/Computing/LatentSemanticIndexing.rdoc
- http://en.wikipedia.org/wiki/Latent_semantic_analysis
== Authors
- Lucas Carlson (mailto:[email protected])
- David Fayram II (mailto:[email protected])
- Cameron McBride (mailto:[email protected])
This library is released under the terms of the GNU LGPL. See LICENSE for more details.