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Content-Based Social Recommendation with Poisson Matrix Factorization

机译:泊松矩阵分解的基于内容的社会推荐

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We introduce Poisson Matrix Factorization with Content and Social trust information (PoissonMF-CS), a latent variable probabilistic model for recommender systems with the objective of jointly modeling social trust, item content and user's preference using Poisson matrix factorization framework. This probabilistic model is equivalent to collectively factorizing a non-negative user-item interaction matrix and a non-negative item-content matrix. The user-item matrix consists of sparse implicit (or explicit) interactions counts between user and item, and the item-content matrix consists of words or tags counts per item. The model imposes additional constraints given by the social ties between users, and the homophily effect on social networks - the tendency of people with similar preferences to be socially connected. Using this model we can account for and fine-tune the weight of content-based and social-based factors in the user preference. We develop approximate variational inference algorithm and perform experiments comparing PoissonMF-CS with competing models. The experimental evaluation indicates that PoissonMF-CS achieves superior predictive performance on held-out data for the top-M recommendations task. Also, we observe that PoissonMF-CS generates compact latent representations when compared with alternative models while maintaining superior predictive performance. Code related to this chapter is available at: https://github.com/zehsilva/poissonmf_cs Data related to this chapter are available at: http://files.grouplens.org/ datasets/hetrec2011/hetrec2011-lastfm-readme.txt.
机译:我们引入具有内容和社会信任信息的Poisson矩阵分解(PoissonMF-CS),这是推荐系统的潜在变量概率模型,目的是使用Poisson矩阵分解框架共同建模社会信任,项目内容和用户偏好。该概率模型等效于将非负用户项交互矩阵和非负项内容矩阵归并分解。用户项目矩阵由用户和项目之间的稀疏隐式(或显式)交互计数组成,项目内容矩阵由每个项目的单词或标签计数组成。该模型强加了用户之间的社交联系以及社交网络上的同质性(即具有相似偏好的人进行社交联系的趋势)所赋予的其他约束。使用此模型,我们可以考虑和微调用户偏好中基于内容和基于社交的因素的权重。我们开发了近似变分推理算法,并进行了PoissonMF-CS与竞争模型的比较实验。实验评估表明,PoissonMF-CS在保留的数据方面对前M个推荐任务具有出色的预测性能。此外,我们观察到,与其他模型相比,PoissonMF-CS可以生成紧凑的潜在表示,同时还能保持出色的预测性能。与本章相关的代码位于:https://github.com/zehsilva/poissonmf_cs与本章相关的数据位于:http://files.grouplens.org/datasets/hetrec2011/hetrec2011-lastfm-readme.txt 。

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