基于改进fp树的购物篮分析

Abhishek Priyadarshi, Chirag Gupta, G. Poornalatha
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引用次数: 0

摘要

购物篮分析有助于识别客户的购买模式,例如,哪些产品购买更多,哪些产品一起购买。这有助于决策过程。例如,如果经常一起购买两种或两种以上的产品,那么它们可以放在同一个地方,这样方便客户,进一步增加他们的销售。对于不经常购买的产品,可以降低价格,以提高其购买量。此外,一种产品的推广也会增加其他产品的销售,这些产品与被推广的产品一起购买。传统的基于候选项生成的Apriori算法不能用于购物篮分析,因为它生成候选项集并定期扫描数据库以生成频繁项集。尽管FP-growth算法不生成候选集,并且只扫描数据库两次,但它不能使用,因为它递归地生成了大量条件树。因此,需要使用一种高效的算法。本文采用了一种高效的算法来开发购物篮分析应用程序。该算法既不生成候选集,也不生成条件FP树;比如FP-growth扫描数据库两次
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Market Basket Analysis using Improved FP-tree
The Market Basket Analysis helps in identifying the purchasing patterns of customers such as, which products are purchased more and which products are purchased together. This helps in decision making process. For example, if two or more products are frequently purchased together then they can be kept at the same place so as to facilitate the customer, to further increase their sale. The price of products that are not frequently purchased can be reduced in order to enhance their purchase. Additionally the promotion of one product will also increase the sales of other products which are purchased together with the product being promoted. The traditional Apriori algorithm based on candidate generation cannot be used in Market Basket Analysis because it generates candidate sets and scans database regularly for the generation of frequent itemsets. The FP-growth algorithm cannot be used despite of the fact that it does not generate candidate sets and scans the database only twice because, it generates a lot of conditional trees recursively. Therefore, an efficient algorithm needs to be used. In this paper an efficient algorithm is used for development of market basket analysis application. This efficient algorithm neither generates candidate sets nor conditional FP- tree; like FP-growth scans the database twice
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