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A context-aware recommendation system based on latent factor model

机译:基于潜在因子模型的背景知识推荐系统

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Recommendation systems are the effective tools that get over the information overload problem, providing users with the most appropriate things by considering their personal preferences. The interaction contextual information is considered to help improve the accuracy of the recommendation results. A few previous studies have tried to put to use contextual information to the recommendation system. In this paper, we propose a new recommendation model called C-LFM, which adds contextual information to Latent Factor Model (LFM) to improve recommendation results. Different from the existing recommendation method, C-LFM regards contextual information as a factor of LFM. Extensive experiments are conducted, and the experimental results present the effectiveness of C-LFM to us.
机译:推荐系统是克服信息过载问题的有效工具,通过考虑个人偏好,为用户提供最合适的东西。互动上下文信息被认为是有助于提高推荐结果的准确性。以前的一些研究试图将上下文信息与推荐系统一起使用。在本文中,我们提出了一个名为C-LFM的新推荐模型,它将上下文信息添加到潜在因子模型(LFM),以改善推荐结果。与现有推荐方法不同,C-LFM将上下文信息视为LFM的因素。进行了广泛的实验,实验结果呈现给我们C-LFM的有效性。

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