On the mining of substitution rules for statistically dependent items

Wei-Guang Teng, M. Hsieh, Ming-Syan Chen
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引用次数: 67

Abstract

In this paper a new mining capability, called mining of substitution rules, is explored. A substitution refers to the choice made by a customer to replace the purchase of items with that of others. The process of mining substitution rules can be decomposed into two procedures. The first identifies concrete itemsets among a large number of frequent itemsets, where a concrete itemset is a frequent itemset whose items are statistically dependent. The second is substitution rule generation. Two concrete itemsets X and Y form a substitution rule, denoted by X /spl utri/ Y to mean that X is a substitute for Y if and only if X and Y are negatively correlated and the negative association rule X /spl rarr/ Y~ exists. We derive theoretical properties for the model of substitution rule mining. Then, in light of these properties, the SRM algorithm (substitution rule mining) is designed and implemented to discover substitution rules efficiently while attaining good statistical significance. Empirical studies are performed to evaluate the performance of the SRM algorithm. It is shown that SRM produces substitution rules of very high quality.
统计相关项的替换规则挖掘
本文探索了一种新的挖掘能力,即替代规则的挖掘。替代是指顾客选择用他人购买的商品代替所购买的商品。替换规则的挖掘过程可以分解为两个过程。第一种方法在大量频繁项目集中识别具体项目集,其中具体项目集是一个频繁项目集,其项目在统计上是相关的。第二步是替换规则生成。两个具体的项目集X和Y形成一个替换规则,用X /spl tri/ Y表示,表示当且仅当X与Y负相关且存在负关联规则X /spl rarr/ Y~时,X可以代替Y。推导了替代规则挖掘模型的理论性质。然后,根据这些特性,设计并实现了SRM算法(替代规则挖掘),在获得良好统计显著性的同时高效地发现替代规则。通过实证研究对SRM算法的性能进行了评价。结果表明,SRM产生的替换规则质量非常高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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