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Social Collaborative Filtering by Trust

机译:信任的社会协作筛选

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摘要

To accurately and actively provide users with their potentially interested information or services is the main task of a recommender system.Collaborative filtering is one of the most widely adopted recommender algorithms,whereas it is suffering the issues of data sparsity and cold start that will severely degrade quality of recommendations.To address such issues,this article proposes a novel method,trying to improve the performance of collaborative filtering recommendation by means of elaborately integrating twofold sparse information,the conventional rating data given by users and the social trust network among the same users.It is a model-based method adopting matrix factorization technique to map users into low-dimensional latent feature spaces in terms of their trust relationship,aiming to reflect users’ reciprocal influence on their own opinions more reasonably.The validations against a real-world dataset show that the proposed method performs much better than state-of-the-art recommendation algorithms for social collaborative filtering by trust.
机译:准确主动地向用户提供其潜在感兴趣的信息或服务是推荐系统的主要任务。协作过滤是应用最广泛的推荐算法之一,但它正遭受数据稀疏和冷启动的问题,这将严重降低性能为了解决此类问题,本文提出了一种新颖的方法,通过精心集成双重稀疏信息,用户给出的常规评级数据以及相同用户之间的社会信任网络,试图提高协作过滤推荐的性能。这是一种基于模型的方法,采用矩阵分解技术将用户根据其信任关系映射到低维潜在特征空间,目的是更合理地反映用户对其自己意见的相互影响。数据集表明,所提出的方法比最新记录的性能好得多用于通过信任进行社会协作过滤的推荐算法。

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