Cross-Social Network Collaborative Recommendation

Aleksandr Farseev, Denis Kotkov, Alexander Semenov, J. Veijalainen, Tat-Seng Chua
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引用次数: 12

Abstract

Online social networks have become an essential part of our daily life, and an increasing number of users are using multiple online social networks simultaneously. We hypothesize that the integration of data from multiple social networks could boost the performance of recommender systems. In our study, we perform cross-social network collaborative recommendation and show that fusing multi-source data enables us to achieve higher recommendation performance as compared to various single-source baselines.
跨社会网络协同推荐
在线社交网络已经成为我们日常生活中必不可少的一部分,越来越多的用户同时使用多个在线社交网络。我们假设来自多个社交网络的数据集成可以提高推荐系统的性能。在我们的研究中,我们进行了跨社交网络的协同推荐,并表明与各种单一来源的基线相比,融合多源数据使我们能够获得更高的推荐性能。
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