HUPM: Efficient High Utility Pattern Mining Algorithm for E-Business

M. M. Bala, Rohit Dandamudi
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引用次数: 1

Abstract

Utility pattern mining addresses the current common challenges of E-business by analysis of market behavior and customer trends of transactional data. However, it has some important limitations when it comes to analyzing customer transactions in any business as buying quantities are not considered into account. Thus, it leads to misappropriate analysis due to consideration of an item may only appear once or zero times in a transaction data and a weight of all item have given same importance. To address the above said confines, the problem of identification of frequent set of items as patterns has been defined in E business as High Utility Pattern Mining (HUPM). The focus of this paper is finding high utility patterns by using weighted utilization value of each product. This is implemented in two modules finding top k high utility patterns by constructing UP growth tree and TKU algorithm and finding top-k utilities in one phase approach with TKO algorithm to mine HUPs without any assumptions of minimum utility threshold. Experimental results show that the proposed algorithms take a smaller amount of computational cost, thus it shows more efficiency once compared with other present methods on standard data sets.
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面向电子商务的高效、高效用模式挖掘算法
效用模式挖掘通过分析交易数据的市场行为和客户趋势来解决当前电子商务的共同挑战。然而,当涉及到分析任何业务中的客户交易时,它有一些重要的局限性,因为购买数量没有被考虑在内。因此,由于考虑一个项目可能在交易数据中只出现一次或零次,并且所有项目的权重都具有相同的重要性,因此导致分析不当。为了解决上述限制,在电子商务中将频繁的项目集识别为模式的问题定义为高效用模式挖掘(High Utility Pattern Mining, HUPM)。本文的重点是利用各产品的加权利用值来寻找高效用模式。这在两个模块中实现,通过构建UP增长树和TKU算法找到top k高效用模式,使用TKO算法在一阶段方法中找到top-k效用,在不假设最小效用阈值的情况下挖掘HUPs。实验结果表明,该算法的计算量较小,在标准数据集上与现有方法相比具有更高的效率。
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