Title
MICAR: nonlinear association rule mining based on maximal information coefficient
Abstract
Association rule mining (ARM) is an important research issue in data mining and knowledge discovery. Existing ARM methods cannot discover nonlinear association rules, despite nonlinearity being common and significant in engineering practice. Besides, negative association rules are less researched, although they can effectively reflect widely existing negative associations in practical complex systems. Consequently, we propose MICAR, a nonlinear ARM method based on the maximal information coefficient (MIC). MICAR can extract nonlinear association rules in positive and negative forms from transactional or continuous databases. MICAR is realized in three steps: data preprocessing, candidate itemset mining and association rule generation. MIC is used to identify the type of association rules and find potential nonlinear correlations. MICAR can also control the redundancy in itemsets and association rules by restricting their quantity and forms. Experiments on authentic and simulation datasets show that MICAR can extract high-quality positive and negative association rules more effectively and efficiently than existing methods, especially has the unique ability to extract nonlinear association rules.
Year
DOI
Venue
2022
10.1007/s10115-022-01730-4
Knowledge and Information Systems
Keywords
DocType
Volume
Data mining, Association rule mining, Nonlinear association rule, Negative association rule, Maximal information coefficient
Journal
64
Issue
ISSN
Citations 
11
0219-1377
0
PageRank 
References 
Authors
0.34
29
5
Name
Order
Citations
PageRank
Liu Maidi100.34
Yang Zhiwei200.34
Guo Yong300.34
Jiang Jiang4325.60
Ke-wei Yang519322.65