Discovery of unapparent association rules based on extracted probability

作者:

摘要

Association rule mining is an important task in data mining. However, not all of the generated rules are interesting, and some unapparent rules may be ignored. We have introduced an “extracted probability” measure in this article. Using this measure, 3 models are presented to modify the confidence of rules. An efficient method based on the support-confidence framework is then developed to generate rules of interest. The adult dataset from the UCI machine learning repository and a database of occupational accidents are analyzed in this article. The analysis reveals that the proposed methods can effectively generate interesting rules from a variety of association rules.

论文关键词:Association rule,Extracted probability,Occupational fatalities,Construction industry

论文评审过程:Received 11 March 2007, Revised 3 March 2009, Accepted 2 April 2009, Available online 15 April 2009.

论文官网地址:https://doi.org/10.1016/j.dss.2009.04.006