Title :
Belief learning in certainty factor model and its application to text categorization
Author :
Qu, Weidong ; Shirai, Katsuhiko
Author_Institution :
Dept. of Inf. & Comput. Sci., Waseda Univ., Japan
Abstract :
This paper describes a method of belief learning in certainty factor model and applied to a task of text categorization. The method uses a multiplicative update algorithm to perform the belief learning of rules and predicts by a certainty (plausible) inference mechanism. The key difference between the proposed method and Sleeping-experts algorithms is that the method uses the rule´s combination functions instead of the weighted combination of the predictions. When applied to a text categorization task, this method can easily integrates user defined IF-THEN rules due to being compatible with expert system´s rules combination framework. The initial experiments show that the performance of this method is comparable to Sleeping-experts method. Moreover, it has better time and space efficiency than Sleeping-experts method.
Keywords :
belief networks; expert systems; inference mechanisms; learning systems; text analysis; IF-THEN rules; belief learning; certainty factor model; certainty inference mechanism; expert system; multiplicative update algorithm; rule combination function; text categorization; Acoustic noise; Application software; Bayesian methods; Computer science; Inference algorithms; Inference mechanisms; Learning systems; Machine learning algorithms; Resists; Text categorization;
Conference_Titel :
Information, Communications and Signal Processing, 2003 and Fourth Pacific Rim Conference on Multimedia. Proceedings of the 2003 Joint Conference of the Fourth International Conference on
Print_ISBN :
0-7803-8185-8
DOI :
10.1109/ICICS.2003.1292649