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A Graph-based model for context-aware recommendation using implicit feedback data

机译:使用隐式反馈数据的基于图的上下文感知推荐模型

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摘要

Recommender systems have been successfully dealing with the problem of information overload. However, most recommendation methods suit to the scenarios where explicit feedback, e.g. ratings, are available, but might not be suitable for the most common scenarios with only implicit feedback. In addition, most existing methods only focus on user and item dimensions and neglect any additional contextual information, such as time and location. In this paper, we propose a graph-based generic recommendation framework, which constructs a Multi-Layer Context Graph (MLCG) from implicit feedback data, and then performs ranking algorithms in MLCG for context-aware recommendation. Specifically, MLCG incorporates a variety of contextual information into a recommendation process and models the interactions between users and items. Moreover, based on MLCG, two novel ranking methods are developed: Context-aware Personalized Random Walk (CPRW) captures user preferences and current situations, and Semantic Path-based Random Walk (SPRW) incorporates semantics of paths in MLCG into random walk model for recommendation. The experiments on two real-world datasets demonstrate the effectiveness of our approach.
机译:推荐系统已经成功地解决了信息过载的问题。但是,大多数推荐方法都适合于显式反馈(例如可以使用评级,但可能不适合仅包含隐式反馈的最常见情况。此外,大多数现有方法仅关注用户和项目的尺寸,而忽略了任何其他上下文信息,例如时间和位置。在本文中,我们提出了一种基于图的通用推荐框架,该框架根据隐式反馈数据构造多层上下文图(MLCG),然后在MLCG中执行用于上下文感知推荐的排序算法。具体而言,MLCG将各种上下文信息合并到推荐过程中,并对用户和项目之间的交互进行建模。此外,基于MLCG,开发了两种新颖的排名方法:上下文感知的个性化随机游走(CPRW)捕获用户的喜好和当前状况,基于语义路径的随机游走(SPRW)将MLCG中路径的语义纳入随机游走模型中,以用于建议。在两个真实世界的数据集上进行的实验证明了我们方法的有效性。

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