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Efficient Adaptive-Support Association Rule Mining for Recommender Systems

机译:推荐系统的高效自适应支持关联规则挖掘

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摘要

Collaborative recommender systems allow personalization for e-commerce by exploiting similarities and dissimilarities among customers' preferences. We investigate the use of association rule mining as an underlying technology for collaborative recommender systems. Association rules have been used with success in other domains. However, most currently existing association rule mining algorithms were designed with market basket analysis in mind. Such algorithm are inefficient for collaborative recommendation because they mine many rules that are not relevant to a given user. Also, it is necessary to specify the minimum support of the mined rules in advance, often leading to either too many or too few rules; this negatively impacts the performance of the overall system. We describe a collaborative recommendation technique based on a new algorithm specifically designed to mine association rules for this purpose. Our algorithm does not require the minimum support to be specified in advance. Rather, a target range is given for the number of rules, and the algorithm adjusts the minimum support for each user in order to obtain a ruleset whose size is in the desired range. Rules are mined for a specific target user, reducing the time required for the mining process. We employ associations between users as well as associations between items in making recommendations. Experimental evaluation of a system based on our algorithm reveals performance that is significantly better than that of traditional correlation-based approaches.
机译:协作推荐系统可通过利用客户偏好之间的相似性和不同性来实现电子商务的个性化。我们调查使用关联规则挖掘作为协作推荐系统的基础技术。关联规则已在其他领域成功使用。但是,当前大多数现有的关联规则挖掘算法都是在考虑市场篮分析的情况下设计的。这样的算法对于协作推荐效率低下,因为它们会挖掘许多与给定用户无关的规则。另外,有必要事先指定对已开发规则的最小支持,这通常会导致规则过多或过少;这会对整个系统的性能产生负面影响。我们描述了一种基于新算法的协作推荐技术,该算法专门设计用于为此目的挖掘关联规则。我们的算法不需要预先指定最低支持。而是,为规则的数量提供了目标范围,并且该算法为每个用户调整最小支持量,以获得大小在所需范围内的规则集。为特定目标用户挖掘规则,从而减少了挖掘过程所需的时间。我们在建议时采用用户之间的关联以及项目之间的关联。根据我们的算法对系统进行的实验评估显示,其性能明显优于传统的基于相关性的方法。

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