학술논문

A NewAssociative Classification Method by Integrating CMAR and Rule Rank Model based on Genetic Network Programming
Document Type
Conference
Source
제어로봇시스템학회 국제학술대회 논문집. 2009-08 2009(8):3874-3879
Subject
Selected keywords relevant to the subject
Language
Korean
ISSN
2005-4750
Abstract
In this paper, we propose an evolutionary approach to rank association rules for classification. The association rules are ranked by their support, confidence and length in one of the most important associative classification method, Classification based on Multiple Association Rule(CMAR). However, from some empirical studies, we find that if the rules are ranked by some equations first, the classification accuracy will be improved in some data sets. In order to generate such equations effectively, we propose a Rule Rank model based on Genetic Network Programming(GNP). The experimental results show that our method could improve the classification accuracies effectively.

Online Access