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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Integrating Community Context Information Into a Reliably Weighted Collaborative Filtering System Using Soft Ratings
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Integrating Community Context Information Into a Reliably Weighted Collaborative Filtering System Using Soft Ratings

机译:将社区上下文信息集成到可靠加权协作过滤系统中,使用软评级

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In this paper, we aim at developing a new collaborative filtering recommender system using soft ratings, which is capable of dealing with both imperfect information about user preferences and the sparsity problem. On the one hand, Dempster-Shafer theory is employed for handling the imperfect information due to its advantage in providing not only a flexible framework for modeling uncertain, imprecise, and incomplete information, but also powerful operations for fusion of information from multiple sources. On the other hand, in dealing with the sparsity problem, community context information that is extracted from the social network containing all users is used for predicting unprovided ratings. As predicted ratings are not a hundred percent accurate, while the provided ratings are actually evaluated by users, we also develop a new method for calculating user-user similarities, in which provided ratings are considered to be more significant than predicted ones. In the experiments, the developed recommender system is tested on two different data sets; and the experiment results indicate that this system is more effective than CoFiDS, a typical recommender system offering soft ratings.
机译:在本文中,我们的目的是使用软评级开发一个新的协作过滤推荐系统,该系统能够处理有关用户偏好和稀疏问题的不完美信息。一方面,Dempster-Shafer理论用于处理由于其优势而在提供了用于建模不确定,不精确和不完整信息的灵活框架,而是从多个来源融合信息的强大操作,以处理不完美的信息。另一方面,在处理稀疏问题时,从包含所有用户的社交网络中提取的社区上下文信息用于预测无内容的额定值。由于预测的评级不是百分率,而提供的额定值实际上由用户评估,我们还开发了一种用于计算用户用户相似性的新方法,其中提供了提供的额定值比预测的更多的额定值。在实验中,开发的推荐系统在两个不同的数据集上进行了测试;实验结果表明,该系统比CoFID更有效,典型的推荐系统提供软评级。

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