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A data mining approach to product assortment and shelf space allocation

机译:产品分类和货架空间分配的数据挖掘方法

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摘要

In retailing, a variety of products compete to be displayed in the limited shelf space since it has a significant effect on demands. To affect customers' purchasing decisions, retailers properly make decisions about which products to display (product assortment) and how much shelf space to allocate the stocked products (shelf space allocation). In the previous studies, researchers usually employed the space elasticity to optimize product assortment and space allocation models. The space elasticity is usually used to construct the relationship between shelf space and product demand. However, the large number of parameters requiring to estimate and the he non-linear nature of space elasticity can reduce the efficacy of the space elasticity based models. This paper utilizes a popular data mining approach, association rule mining, instead of space elasticity to resolve the product assortment and allocation problems in retailing. In this paper, the multi-level association rule mining is applied to explore the relationships between products as well as between product categories. Because association rules are obtained by directly analyzing the transaction database, they can generate more reliable information to shelf space management.
机译:在零售中,多种产品竞争在有限的货架空间中展示,因为这会对需求产生重大影响。为了影响客户的购买决策,零售商应适当决定要展示的产品(产品分类)以及要分配多少库存产品的货架空间(货架空间分配)。在以前的研究中,研究人员通常利用空间弹性来优化产品分类和空间分配模型。空间弹性通常用于构建货架空间与产品需求之间的关系。但是,需要估计的大量参数以及空间弹性的非线性性质会降低基于空间弹性的模型的有效性。本文采用流行的数据挖掘方法(关联规则挖掘)代替空间弹性来解决零售中的产品分类和分配问题。在本文中,多层关联规则挖掘被用于探索产品之间以及产品类别之间的关系。由于关联规则是通过直接分析交易数据库而获得的,因此它们可以为货架空间管理生成更可靠的信息。

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