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Market basket analysis in a multiple store environment

机译:多商店环境中的购物篮分析

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Market basket analysis (also known as association-rule mining) is a useful method of discovering customer purchasing patterns by extracting associations or co-occurrences from stores' transactional databases. Because the information obtained from the analysis can be used in forming marketing, sales, service, and operation strategies, it has drawn increased research interest. The existing methods, however, may fail to discover important purchasing patterns in a multi-store environment, because of an implicit assumption that products under consideration are on shelf all the time across all stores. In this paper, we propose a new method to overcome this weakness. Our empirical evaluation shows that the proposed method is computationally efficient, and that it has advantage over the traditional method when stores are diverse in size, product mix changes rapidly over time, and larger numbers of stores and periods are considered.
机译:市场购物篮分析(也称为关联规则挖掘)是一种通过从商店的交易数据库中提取关联或共现来发现客户购买模式的有用方法。由于从分析中获得的信息可用于形成营销,销售,服务和运营策略,因此引起了越来越多的研究兴趣。但是,由于隐含假设所考虑的产品始终在所有商店中都上架,因此现有方法可能无法在多商店环境中发现重要的购买模式。在本文中,我们提出了一种克服这一弱点的新方法。我们的经验评估表明,该方法在计算上是有效的,并且当商店的大小各不相同,产品结构随时间快速变化并且考虑到更多的商店和期间时,它比传统方法更具优势。

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