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Mining interesting user behavior patterns in mobile commerce environments

机译:在移动商务环境中挖掘有趣的用户行为模式

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摘要

Discovering user behavior patterns from mobile commerce environments is an essential topic with wide applications, such as planning physical shopping sites, maintaining e-commerce on mobile devices and managing online shopping websites. Mobile sequential pattern mining is an emerging issue in this topic, which considers users' moving paths and purchased items in mobile commerce environments to find the complete set of mobile sequential patterns. However, an important factor, namely users' interests, has not been considered yet in past studies. In practical applications, users may only be interested in the patterns with some user-specified constraints. The traditional methods without considering the constraints pose two crucial problems: (1) Users may need to filter out uninteresting patterns within huge amount of patterns, (2) Finding the complete set of patterns containing the uninteresting ones needs high computational cost and runtime. In this paper, we address the problem of mining mobile sequential patterns with two kinds of constraints, namely importance constraints and pattern constraints. Here, we consider the importance of an item as its utility (i.e., profit) in the mobile commerce environment. An efficient algorithm, IM-Span (I nteresting M obile S equential Pa tter n mining), is proposed for dealing with the two kinds of constraints. Several effective strategies are employed to reduce the search space and computational cost in different aspects. Experimental results show that the proposed algorithms outperform state-of-the-art algorithms significantly under various conditions.
机译:从移动商务环境中发现用户行为模式是广泛应用程序中必不可少的主题,例如规划实体购物网站,在移动设备上维护电子商务以及管理在线购物网站。移动顺序模式挖掘是该主题中的一个新兴问题,它考虑了用户在移动商务环境中的移动路径和购买的商品,以找到完整的移动顺序模式集。然而,在过去的研究中尚未考虑到重要因素,即用户的兴趣。在实际应用中,用户可能仅对具有某些用户指定约束的模式感兴趣。不考虑约束的传统方法带来两个关键问题:(1)用户可能需要在大量模式中滤除不感兴趣的模式,(2)找到包含不感兴趣的模式的完整模式集需要很高的计算成本和运行时间。在本文中,我们解决了挖掘具有两种约束的移动顺序模式的问题,即重要性约束和模式约束。在这里,我们将商品的重要性视为其在移动商务环境中的效用(即利润)。提出了一种有效的算法IM-Span(有趣的序列序列挖掘)来处理两种约束。在不同方面,采用了几种有效的策略来减少搜索空间和计算成本。实验结果表明,所提出的算法在各种条件下均明显优于最新算法。

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