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Collaborative Topic Regression with Multiple Graphs Factorization for Recommendation in Social Media

机译:具有多个图形因子的协作主题回归在社交媒体中推荐

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With a large amount of complex network data available from multiple data sources, how to effectively combine these available data with existing auxiliary information such as item content into the same recommendation framework for more accurately modeling user preference is an interesting and significant research topic for various recommender systems. In this paper, we propose a novel hierarchical Bayesian model to integrate multiple social network structures and content information for item recommendation. The key idea is to formulate a joint optimization framework to learn latent user and item representations, with simultaneously learned social factors and latent topic variables. The main challenge is how to exploit the shared information among multiple social graphs in a probabilistic framework. To tackle this challenge, we incorporate multiple graphs probabilistic factorization with two alternatively designed combination strategies into collaborative topic regression (CTR). Experimental results on real dataset demonstrate the effectiveness of our approach.
机译:通过多种数据源可获得大量复杂的网络数据,如何使用诸如项目内容的现有辅助信息(如项目内容)的现有辅助信息(例如更准确地建模用户偏好)有效地组合这些可用数据是各种推荐人的有趣和重要的研究主题系统。在本文中,我们提出了一种新颖的分层贝叶斯模型,用于整合物品推荐的多个社交网络结构和内容信息。关键的想法是制定联合优化框架来学习潜在用户和项目表示,同时学习社会因素和潜在主题变量。主要挑战是如何在概率框架中利用多个社交图之间的共享信息。为了解决这一挑战,我们将多个图形概率分解与两个可选择的组合策略融入了协作主题回归(CTR)。实验结果对实时数据集展示了我们方法的有效性。

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