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Recommendation Based on Contextual Opinions

机译:基于语境意见的建议

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摘要

Context has been recognized as an important factor in constructing personalized recommender systems. However, most context-aware recommendation techniques mainly aim at exploiting item-level contextual information for modeling users' preferences, while few works attempt to detect more fine-grained aspect-level contextual preferences. Therefore, in this article, we propose a contextual recommendation algorithm based on user-generated reviews, from where users' context-dependent preferences are inferred through different contextual weighting strategies. The context-dependent preferences are further combined with users' context-independent preferences for performing recommendation. The empirical results on two real-life datasets demonstrate that our method is capable of capturing users' contextual preferences and achieving better recommendation accuracy than the related works.
机译:背景信息已被认为是构建个性化推荐系统的重要因素。但是,大多数上下文知识的推荐技术主要旨在利用项目级上下文信息来建立用户的偏好,而很少有效尝试检测更细粒度的方面级别上下文偏好。因此,在本文中,我们提出了一种基于用户生成的评论的上下文推荐算法,从用户的上下文相关的偏好通过不同的上下文加权策略推断。上下文相关的偏好是与用户的上下文的独立于执行推荐的偏好相结合。两个实际数据集的实证结果表明,我们的方法能够捕获用户的上下文偏好并实现比相关工程更好的推荐准确性。

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