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Mining item-item and between-set correlated association rules
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作者 Bin SHEN Min YAO +2 位作者 Li-jun XIE Rong ZHU Yun-ting TANG 《Journal of Zhejiang University-Science C(Computers and Electronics)》 SCIE EI 2011年第2期96-109,共14页
To overcome the failure in eliminating suspicious patterns or association rules existing in traditional association rules mining, we propose a novel method to mine item-item and between-set correlated association rule... To overcome the failure in eliminating suspicious patterns or association rules existing in traditional association rules mining, we propose a novel method to mine item-item and between-set correlated association rules. First, we present three measurements: the association, correlation, and item-set correlation measurements. In the association measurement, the all-confidence measure is used to filter suspicious cross-support patterns, while the all-item-confidence measure is applied in the correlation measurement to eliminate spurious association rules that contain negatively correlated items. Then, we define the item-set correlation measurement and show its corresponding properties. By using this measurement, spurious association rules in which the antecedent and consequent item-sets are negatively correlated can be eliminated. Finally, we propose item-item and between-set correlated association rules and two mining algorithms, I&ISCoMine_AP and I&ISCoMine_CT. Experimental results with synthetic and real retail datasets show that the proposed method is effective and valid. 展开更多
关键词 Item-item and between-set correlated association rules All-confidence All-item-confidence Item-set correlation Mining algorithms pruning effect
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