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Mining Negative Association Rules
Ramada Hotel, Taormina-Giardini Naxos, Italy July 01-July 04
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ISCC.2002.1021739Seventh IEEE Symposium on Computers a ...
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Xiaohui Yuan, Tulane University
Bill P. Buckles, Tulane University
Zhaoshan Yuan, Hefei University of Technology
Jian Zhang, Tulane University
The focus of this paper is the discovery of negative association rules. Such association rules are complementary to the sorts of association rules most often encountered in literatures and have the forms of X \rightarrow \neg Y or \neg X \rightarrow Y. We present a rule discovery algorithm that finds a useful subset of valid negative rules. In generating negative rules, we employ a hierarchical graph-structured taxonomy of domain terms. A taxonomy containing classification information records the similarity between items. Given the taxonomy, sibling rules, duplicated from positive rules with a couple items replaced, are derived together with their estimated confidence. Those sibling rules that bring big confidence deviation are considered candidate negative rules. Our study shows that negative association rules can be discovered efficiently from large database.
Citation:
Xiaohui Yuan, Bill P. Buckles, Zhaoshan Yuan, Jian Zhang, "Mining Negative Association Rules," iscc, pp.623, Seventh IEEE Symposium on Computers and Communications (ISCC'02), 2002
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