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Enhancing tag-based collaborative filtering via integrated social networking information

机译:通过集成的社交网络信息增强基于标签的协作滤波

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Recently, researchers have taken tremendous strides in attempting to synthesize conventional social judgments and automated filtering within recommender systems. In this study, we aim to enhance recommendation efficiency via integrating social networking information with traditional recommendation algorithms. To achieve this objective, we first propose a new user similarity metric that not only considers tagging activities of users, but also incorporates their social relationships, such as friendship and membership, in measuring the closeness of two users. Subsequently, we define a new item prediction method which makes use of both user-to-user similarity and item-to-item similarity. Experimental outcomes on Last.fm show some positive results that attest the efficiency of our proposed approach.
机译:最近,研究人员在尝试在推荐系统中综合传统的社会判断和自动化过滤时取得了巨大进步。在这项研究中,我们旨在通过将社交网络信息与传统推荐算法集成,提高推荐效率。为实现这一目标,我们首先提出了一种新的用户相似性,不仅考虑了用户的标记活动,还包括他们的社会关系,例如友谊和成员,在测量两个用户的近距离。随后,我们定义了一种新的项目预测方法,它利用用户到用户的相似性和项目到项目相似性。最后的实验结果显示了一些积极的结果,证明了我们提出的方法的效率。

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