标题:
CONFIDENCE METRICS FOR ASSOCIATION RULE MINING.作者:
Xiaowei Yan1
Chengqi Zhang1
Shichao Zhang2
zhangsc@it.uts.edu.au来源:
Applied Artificial Intelligence; Sep2009, Vol. 23 Issue 8, p713-737, 25p, 1 graph文献类型:Article主题语:*
VERSIFICATION
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TASK analysis
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DECISION making
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ALGORITHMS
ASSOCIATION rule mining摘要:We propose a simple, novel, and yet effective
confidence metric for measuring the interestingness of
association rules. Distinguishing from existing
confidence measures, our
metrics really indicate the positively companionate correlations between frequent itemsets. Furthermore, some desired properties are derived
for examining the goodness of
confidence measures in terms of probabilistic significance. We systematically analyze our
metrics and traditional ones, and demonstrate that our new algorithm significantly captures the mainstream properties. Our approach will be useful to many
association analysis tasks where one must provide actionable
association rules and assist users to make quality decisions. [ABSTRACT FROM AUTHOR]
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