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Extracting Promising Sequential Patterns from RFID Data Using the LCM Sequence

机译:使用LCM序列从RFID数据中提取有前途的顺序模式

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Recently, supermarkets have been using RFID tags attached to shopping carts to track customers' in-store movements and to collect data on their paths. Path data obtained from customers' movements recorded in a spatial configuration contain valuable information for marketing. Customers' purchase behavior and their in-store movements can be analyzed not only by using path data but also by combining it with POS data. However, the volume of path data is very large, since the position of a cart is updated every second. Therefore, an efficient algorithm must be used to handle these data. In this paper, we apply LCMseq to shopping path data to extract promising sequential patterns with the purpose of comparing prime customers' in-store movements with those of general customers. LCMseq is an efficient algorithm for enumerating all frequent sequence patterns. Finally, we construct a decision tree model using the extracted patterns to determine prime customers' in-store movements.
机译:最近,超市一直在使用附着在购物车上的RFID标签来跟踪顾客的店内活动并收集其路径上的数据。从以空间配置记录的客户移动获得的路径数据包含有价值的营销信息。不仅可以通过使用路径数据,而且可以将其与POS数据相结合来分析客户的购买行为及其店内移动。但是,由于手推车的位置每秒更新一次,因此路径数据量非常大。因此,必须使用有效的算法来处理这些数据。在本文中,我们将LCMseq应用于购物路径数据,以提取有前途的顺序模式,目的是将主要客户的店内动向与一般客户的店内动向进行比较。 LCMseq是枚举所有频繁序列模式的有效算法。最后,我们使用提取的模式构建决策树模型,以确定主要客户的店内动向。

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