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Mining paths and transactions data to improve allocating commodity shelves in supermarket

机译:挖掘路径和交易数据以改善超市中商品货架的分配

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摘要

How to deploy commodities for sale in different shelves in a supermarket in order to obtain better benefit for merchants with considering convenience for customers is an important topic in the retail area. In this paper, we present a new method for allocating commodity shelves in supermarket based on customers' shopping paths and transactions data mining. Therein, customers' shopping paths data can be obtained by shopping cart or basket, on which RFID (Radio Frequency Identification) tags located. And shopping transaction data can be obtained from POS (Point of Sales) machine. Through integrating and mining the frequent paths data and transactions data, See-Buy Rate, which refers to an approximate probability to purchase this commodity for customers when they see this commodity, can be calculated for each commodity. Based on See-Buy Rate, we build benefit optimization model to obtain the optimal allocating solution with considering the profit, sales volume, and purchase probability of the commodity. At last, one computation example is illustrated to show how to apply this method to practice.
机译:如何在考虑到顾客方便的同时在超市的不同货架上部署要出售的商品,以使商家获得更好的利益,这是零售领域的重要课题。本文提出了一种基于顾客购物路径和交易数据挖掘的超市商品货架分配新方法。其中,可以通过购物车或购物篮获得顾客的购物路径数据,在这些购物车或购物篮上放置RFID(射频识别)标签。可以从POS(销售点)机器获取购物交易数据。通过集成和挖掘常用路径数据和交易数据,可以计算出每种商品的“购买率”,即当顾客看到该商品时为其购买该商品的近似概率。基于购买率,我们建立了利益优化模型,在考虑商品的利润,销售量和购买概率的情况下,获得了最优的分配方案。最后,以一个计算实例为例,说明如何将该方法应用于实践。

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