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Study on data sparsity in social network-based recommender system

机译:基于社交网络推荐系统的数据稀疏研究

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摘要

With the development of information technology and the expanding of information resources, it is more difficult for people to get the information that they are really interested in, which is so-called information overload. Recommender systems are regarded as an important approach to deal with information overload, because it can predict users' preferences according to users' records. Matrix factorisation is very successful in recommender systems, but it faces the terrible problem of data sparsity. In this paper, the authors deal with the sparsity problem from the perspective of adding more kinds of information from social networks, such as friendships and tags into the recommending model in order to alleviate the sparsity problem. The paper also validates the impacts of users' friendships, tags and neighbours of items on reducing the sparseness of the data and improving the accuracy of recommending by the experiments using the dataset from real life.
机译:随着信息技术的发展和信息资源的扩展,人们更困难地获取他们真正感兴趣的信息,这是所谓的信息过载。 推荐系统被视为处理信息超载的重要方法,因为它可以根据用户的记录预测用户的偏好。 矩阵分子在推荐系统中非常成功,但它面临数据稀疏性的可怕问题。 在本文中,作者从社交网络中添加了更多信息的角度来处理稀疏问题,例如友谊和标签进入推荐模型,以便缓解稀疏问题。 本文还验证了用户友谊,标签和邻居的影响,以减少数据的稀疏性,提高实验从现实生活中的实验推荐的准确性。

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