Using WordNet for Text Categorization

Using WordNet for Text Categorization 

 

Zakaria Elberrichi1, Abdelattif Rahmoun2, and Mohamed Amine Bentaalah1

1EEDIS Laboratory, Department of Computer Science, University Djilali Liabès, Algeria

2King Faisal University, Saudi Arabia

                       

Abstract: This paper explores a method that use WordNet concept to categorize text documents. The bag of words representation used for text representation is unsatisfactory as it ignores possible relations between terms. The proposed method extracts generic concepts from WordNet for all the terms in the text then combines them with the terms in different ways to form a new representative vector. The effects of this method are examined in several experiments using the multivariate chi-square to reduce the dimensionality, the cosine distance and two benchmark corpus the reuters-21578 newswire articles and the 20 newsgroups data for evaluation. The proposed method is especially effective in raising the macro-averaged F1 value, which increased to 0.714 for the Reuters from 0.649 and to 0.719 for the 20 newsgroups from 0.667.

Keywords: 20Newsgroups, ontology, reuters-21578, text categorization, wordNet, and cosine distance.

Received April 5, 2006; Accepted August 1, 2006

Full Text

Read 5809 times Last modified on Wednesday, 20 January 2010 02:31
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…