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Providing Justifications in Recommender Systems

机译:在推荐系统中提供理由

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摘要

Recommender systems are gaining widespread acceptance in e-commerce applications to confront the ldquoinformation overloadrdquo problem. Providing justification to a recommendation gives credibility to a recommender system. Some recommender systems (Amazon.com, etc.) try to explain their recommendations, in an effort to regain customer acceptance and trust. However, their explanations are not sufficient, because they are based solely on rating or navigational data, ignoring the content data. Several systems have proposed the combination of content data with rating data to provide more accurate recommendations, but they cannot provide qualitative justifications. In this paper, we propose a novel approach that attains both accurate and justifiable recommendations. We construct a feature profile for the users to reveal their favorite features. Moreover, we group users into biclusters (i.e., groups of users which exhibit highly correlated ratings on groups of items) to exploit partial matching between the preferences of the target user and each group of users. We have evaluated the quality of our justifications with an objective metric in two real data sets (Reuters and MovieLens), showing the superiority of the proposed method over existing approaches.
机译:推荐系统正在电子商务应用中获得广泛接受,以应对“信息过载”的问题。提供推荐理由可以使推荐系统具有可信度。一些推荐系统(Amazon.com等)试图解释其推荐,以重新获得客户的认可和信任。但是,它们的解释是不够的,因为它们仅基于评级或导航数据,而忽略了内容数据。几种系统已经提出将内容数据与评级数据结合在一起以提供更准确的建议,但是它们不能提供定性依据。在本文中,我们提出了一种新颖的方法,可以同时获得准确和合理的建议。我们为用户构建了一个特征档案,以显示他们喜欢的特征。此外,我们将用户分为两大类(即在项目组上显示高度相关的评分的用户组),以利用目标用户和每组用户的偏好之间的部分匹配。我们在两个真实的数据集中(路透社和MovieLens)使用客观指标评估了论证的质量,显示了所提出方法相对于现有方法的优越性。

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