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Group Recommendations Based on Comprehensive Latent Relationship Discovery

机译:基于全面潜在关系发现的小组建议

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In recent years, due to an increasing overload of information on the Internet, there are many scenarios where Recommender Systems (RSs) are employed to provide suggestions to user groups. However, most proposed approaches of group recommendations simply aggregate individual ratings or individual prediction results, rather than comprehensively investigating the hidden correlative information between members and the group, which results in inferior recommendation performance. In this paper, we propose a new approach, RWR-UTM, for group recommendations based on the combination of an integrated probabilistic topic model - a User Topic Model (UTM) and the Random Walk with Restart (RWR) method. The UTM provides a latent framework of users, groups, and items by exploiting both the users' preference profiles and the items' content information, which together can describe group interests and item features in a more complete manner. This latent framework is then combined with RWR to predict the preference degrees of groups to unrated items by detecting comprehensive latent relationships. In particular, we devised two group-based recommendation algorithms on the basis of different recommendation strategies. Finally, we conducted experiments to evaluate our approach and compare it with other state-of-the-art approaches using the real-world CAMRa2011 data-set. The results demonstrate the advantage of our approach over comparative ones.
机译:近年来,由于互联网上的信息的过载增加,有很多场景,其中用于向用户组提供建议的推荐系统(RSS)。但是,最拟议的团体建议方法只会汇总各个评级或个别预测结果,而不是全面调查成员和本集团之间的隐藏相关信息,这导致了劣等的建议表现。在本文中,我们提出了一种基于集成概率主题模型的组合的新方法Rwr-UTM,用于组建议 - 用户主题模型(UTM)和随机散步与重启(RWR)方法。 UTM通过利用用户的首选项简档和项目的内容信息提供了用户,组和项目的潜在框架,这些内容信息可以以更完整的方式描述组兴趣和项目特征。然后将这种潜在框架与RWR组合以通过检测综合潜在关系来预测到未分发的项目的偏好程度。特别是,我们根据不同的推荐策略设计了两个基于组的推荐算法。最后,我们进行了实验来评估我们的方法,并使用现实世界的CAMRA2011数据集与其他最先进的方法进行比较。结果证明了我们对比较的优势。

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