Mining Positive and Negative Weighted Association Rules from Frequent Itemsets Based on Interest

The weighted association rules (WARs) mining are made because importance of the items is different. Negative association rules (NARs) play important roles in decision-making. But the misleading rules occur and some rules are uninteresting when discovering positive and negative weighted association r...

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Bibliographic Details
Published in:2008 International Symposium on Computational Intelligence and Design Vol. 2; pp. 242 - 245
Main Authors: He Jiang, Yuanyuan Zhao, Xiangjun Dong
Format: Conference Proceeding
Language:English
Published: IEEE 01-10-2008
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Summary:The weighted association rules (WARs) mining are made because importance of the items is different. Negative association rules (NARs) play important roles in decision-making. But the misleading rules occur and some rules are uninteresting when discovering positive and negative weighted association rules (PNWARs) simultaneously. So another parameter is added to eliminate the uninteresting rules. A new model in the paper of extending the support-confidence framework with a sliding interest measure could avoid generating misleading rules. An interest measure was defined and added to the mining algorithm for association rules in the model. The interest measure was set according to the demand of users. The experiment demonstrates that the algorithm discovers interesting weighted negative association rules from large database and deletes the contrary rules.
ISBN:0769533116
9780769533117
DOI:10.1109/ISCID.2008.172