首页> 外文会议>International Conference on Trust Management(iTrust 2005); 20050523-26; Paris(FR) >Alleviating the Sparsity Problem of Collaborative Filtering Using Trust Inferences
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Alleviating the Sparsity Problem of Collaborative Filtering Using Trust Inferences

机译:使用信任推理缓解协同过滤的稀疏性问题

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Collaborative Filtering (CF), the prevalent recommendation approach, has been successfully used to identify users that can be characterized as "similar" according to their logged history of prior transactions. However, the applicability of CF is limited due to the sparsity problem, which refers to a situation that transactional data are lacking or are insufficient. In an attempt to provide high-quality recommendations even when data are sparse, we propose a method for alleviating sparsity using trust inferences. Trust inferences are transitive associations between users in the context of an underlying social network and are valuable sources of additional information that help dealing with the sparsity and the cold-start problems. A trust computational model has been developed that permits to define the subjective notion of trust by applying confidence and uncertainty properties to network associations. We compare our method with the classic CF that does not consider any transitive associations. Our experimental results indicate that our method of trust inferences significantly improves the quality performance of the classic CF method.
机译:协作过滤(CF)是一种流行的推荐方法,已成功地用于根据可以记录的先前交易记录的历史来识别可以被称为“相似”的用户。但是,由于稀疏性问题,CF的适用性受到限制,稀疏性问题是指交易数据不足或不足的情况。为了即使在数据稀疏的情况下也能提供高质量的建议,我们提出了一种使用信任推理缓解稀疏性的方法。信任推断是基础社交网络中用户之间的传递性关联,并且是有助于处理稀疏性和冷启动问题的其他信息的宝贵来源。已经开发了一种信任计算模型,该模型允许通过将信任度和不确定性属性应用于网络关联来定义信任的主观概念。我们将我们的方法与不考虑任何传递关联的经典CF进行了比较。我们的实验结果表明,我们的信任推理方法显着提高了经典CF方法的质量性能。

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