Recommender systems (RSs) provide an effective way of alleviating the information overload problem by selecting personalized items for different users. Latent factors based collaborative filtering (CF) has become the popular approaches for RSs due to its accuracy and scalability. Recently, online social networks and user-generated content provide diverse sources for recommendation beyond ratings. Although {\em social matrix factorization} (Social MF) and {\em topic matrix factorization} (Topic MF) successfully exploit social relations and item reviews, respectively, both of them ignore some useful information. In this paper, we investigate the effective data fusion by combining the aforementioned approaches. First, we propose a novel model {\em \mbox{MR3}} to jointly model three sources of information (i.e., ratings, item reviews, and social relations) effectively for rating prediction by aligning the latent factors and hidden topics. Second, we incorporate the implicit feedback from ratings into the proposed model to enhance its capability and to demonstrate its flexibility. We achieve more accurate rating prediction on real-life datasets over various state-of-the-art methods. Furthermore, we measure the contribution from each of the three data sources and the impact of implicit feedback from ratings, followed by the sensitivity analysis of hyperparameters. Empirical studies demonstrate the effectiveness and efficacy of our proposed model and its extension.
翻译:建议系统(RSs)通过为不同用户选择个性化项目,为减轻信息超载问题提供了有效途径。基于协作过滤的隐性因素(CF)由于其准确性和可缩放性,已成为对RSs的流行方法。最近,在线社交网络和用户生成的内容为建议提供了各种来源,超出了评级范围。尽管在线社交网络和用户生成的内容提供了各种建议来源。尽管社会矩阵因子化(MF)和专题矩阵因子化(Tomic MF)分别成功地利用了社会关系和项目审查,但两者都忽略了某些有用的信息。在本文件中,我们通过综合上述方法,调查有效的数据组合。首先,我们提出了一个新的模型(emem\mbox{MR3 ⁇ ),以联合模式三种信息来源(即评级、项目审查和社会关系),通过调整潜在因素和隐性专题,有效地进行评级预测。第二,我们将评级的隐含反馈纳入拟议模式,以提高其能力并展示其灵活性。我们通过综合上述方法,对现实生活数据集进行更准确的评级预测。此外,我们用三个数据源的隐性评级和最高度分析的准确度来衡量。我们根据三个数据源的准确性分析,展示了其效率的准确度,并展示了我们的拟议数据来源和最高性分析。