User-Oriented Context Suggestion

Yong Zheng, B. Mobasher, R. Burke
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引用次数: 15

Abstract

Recommender systems have been used in many domains to assist users' decision making by providing item recommendations and thereby reducing information overload. Context-aware recommender systems go further, incorporating the variability of users' preferences across contexts, and suggesting items that are appropriate in different contexts. In this paper, we present a novel recommendation task, "Context Suggestion", whereby the system recommends contexts in which items may be selected. We introduce the motivations behind the notion of context suggestion and discuss several potential solutions. In particular, we focus specifically on user-oriented context suggestion which involves recommending appropriate contexts based on a user's profile. We propose extensions of well-known context-aware recommendation algorithms such as tensor factorization and deviation-based contextual modeling and adapt them as methods to recommend contexts instead of items. In our empirical evaluation, we compare the proposed solutions to several baseline algorithms using four real-world data sets.
以用户为导向的环境建议
推荐系统已经在许多领域使用,通过提供项目推荐来帮助用户决策,从而减少信息过载。上下文感知推荐系统更进一步,将用户偏好的可变性纳入不同的上下文,并在不同的上下文中推荐合适的项目。在本文中,我们提出了一个新的推荐任务,“上下文建议”,即系统推荐可以选择项目的上下文。我们介绍了上下文暗示概念背后的动机,并讨论了几种可能的解决方案。特别是,我们特别关注用户导向的上下文建议,包括根据用户的个人资料推荐合适的上下文。我们提出了众所周知的上下文感知推荐算法的扩展,如张量分解和基于偏差的上下文建模,并将它们作为推荐上下文而不是项目的方法。在我们的实证评估中,我们使用四个真实世界的数据集将提出的解决方案与几种基线算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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