Title :
Olex: Effective Rule Learning for Text Categorization
Author :
Rullo, Pasquale ; Policicchio, Veronica Lucia ; Cumbo, Chiara ; Iiritano, Salvatore
Author_Institution :
Dept. of Math., Univ. of Calabria, Rende
Abstract :
This paper describes Olex, a novel method for the automatic induction of rule-based text classifiers. Olex supports a hypothesis language of the form "if T1 or hellip or Tn occurs in document d, and none of T1+n,... Tn+m occurs in d, then classify d under category c," where each Ti is a conjunction of terms. The proposed method is simple and elegant. Despite this, the results of a systematic experimentation performed on the REUTERS-21578, the OHSUMED, and the ODP data collections show that Olex provides classifiers that are accurate, compact, and comprehensible. A comparative analysis conducted against some of the most well-known learning algorithms (namely, Naive Bayes, Ripper, C4.5, SVM, and Linear Logistic Regression) demonstrates that it is more than competitive in terms of both predictive accuracy and efficiency.
Keywords :
knowledge based systems; learning (artificial intelligence); pattern classification; text analysis; Olex; rule learning; rule-based text classifiers; text categorization; Clustering; Data mining; Mining methods and algorithms; Text mining; and association rules; classification; classification and association rules; clustering; mining methods and algorithms.; text mining;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2008.206