会议专题

A Novel Fuzzy Positive and Negative Association Rules Algorithm

According to the existing mining algorithm of fuzzy association rules, a novel fuzzy positive and negative association rules algorithm will be proposed in this paper. We focus on the membership function of fuzzy set and minimum support parameters of positive and negative association rules and adopt a method that selects parameters automatically which is based on the k-means clustering. Besides, multi-level fuzzy support and correlation coefficient are chosen to restrain the quantity and quality of rules generated by the algorithm. Finally the validity and accuracy of the algorithm are proved by an experiment.

data mining fuzzy association rules membership function multi-level fuzzy support correlation coefficient

HU Kai

China ship Development & Design Center Wuhan, China

国际会议

电子商务、工程及科学领域的分布计算和应用国际会议(DCABES 2010)

香港

英文

623-628

2010-08-10(万方平台首次上网日期,不代表论文的发表时间)