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Unsupervised Expert Finding in Social Network for Personalized Recommendation

机译:社交网络中针对个人推荐的无监督专家调查

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Personalized Recommendation has drawn greater attention in academia and industry as it can help people filter out massive useless information. Several existing recommender techniques exploit social connections, i.e., friends or trust relations as auxiliary information to improve recommendation accuracy. However, opinion leaders in each circle tend to have greater impact on recommendation than those of friends with different tastes. So we devise two unsupervised methods to identify opinion leaders that are defined as experts. In this paper, we incorporate the influence of experts into circle-based personalized recommendation. Specifically, we first build explicit and implicit social networks by utilizing users' friendships and similarity respectively. Then we identify experts on both social networks. Further, we propose a circle-based personalized recommendation approach via fusing experts' influences into matrix factorization technique. Extensive experiments conducted on two datasets demonstrate that our approach outperforms existing methods, particularly on handing cold-start problem.
机译:个性化建议书在学术界和工业界引起了更多关注,因为它可以帮助人们过滤掉大量无用的信息。现有的几种推荐技术利用社交关系,即朋友或信任关系作为辅助信息来提高推荐准确性。但是,与不同口味的朋友相比,每个圈子中的舆论领袖往往对推荐的影响更大。因此,我们设计了两种无监督的方法来识别被定义为专家的意见领袖。在本文中,我们将专家的影响纳入基于圈子的个性化推荐中。具体而言,我们首先分别利用用户的友谊和相似性来建立显式和隐式社交网络。然后,我们确定两个社交网络上的专家。此外,我们通过将专家的影响融合到矩阵分解技术中,提出了一种基于圈子的个性化推荐方法。在两个数据集上进行的大量实验表明,我们的方法优于现有方法,特别是在处理冷启动问题上。

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