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Collaborative Topic Regression with Social Matrix Factorization for Recommendation Systems

机译:建议系统的社会矩阵分解的协同主题回归

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Social network websites, such as Facebook, YouTube, Lastfm etc, have become a popular platform for users to connect with each other and share content or opinions. They provide rich information for us to study the influence of user's social circle in their decision process. In this paper, we are interested in examining the effectiveness of social network information to predict the user's ratings of items. We propose a novel hierarchical Bayesian model which jointly incorporates topic modeling and probabilistic matrix factorization of social networks. A major advantage of our model is to automatically infer useful latent topics and social information as well as their importance to collaborative filtering from the training data. Empirical experiments on two large-scale datasets show that our algorithm provides a more effective recommendation system than the state-of-the art approaches. Our results reveal interesting insight that the social circles have more influence on people's decisions about the usefulness of information (e.g., bookmarking preference on Delicious) than personal taste (e.g., music preference on Lastfm). We also examine and discuss solutions on potential information leak in many recommendation systems that utilize social information.
机译:社交网站,如Facebook,YouTube,Lastfm等,已成为用户互相连接并共享内容或意见的流行平台。他们为我们提供丰富的信息,以研究用户的社交圈在决策过程中的影响。在本文中,我们有兴趣检查社交网络信息的有效性,以预测用户的物品评级。我们提出了一种新的分层贝叶斯模型,该模型共同融合了社交网络的主题建模和概率矩阵分解。我们模型的一个主要优势是自动推断有用的潜在主题和社会信息以及他们对从训练数据进行协同过滤的重要性。两个大型数据集的实证实验表明,我们的算法提供比最先进的方法更有效的推荐系统。我们的结果揭示了有趣的洞察力,社会界对人们对信息有用性的决定产生了更多影响(例如,在美味的书签偏好)而不是个人味道(例如,Lastfm上的音乐偏好)。我们还在利用社交信息的许多推荐系统中审查和讨论潜在信息泄漏的解决方案。

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