Author_Institution :
SMILES Lab., Xi´an Jiaotong Univ., Xi´an, China
Abstract :
With the advent and popularity of social network, more and more users like to share their experiences, such as ratings, reviews, and blogs. The new factors of social network like interpersonal influence and interest based on circles of friends bring opportunities and challenges for recommender system (RS) to solve the cold start and sparsity problem of datasets. Some of the social factors have been used in RS, but have not been fully considered. In this paper, three social factors, personal interest, interpersonal interest similarity, and interpersonal influence, fuse into a unified personalized recommendation model based on probabilistic matrix factorization. The factor of personal interest can make the RS recommend items to meet users´ individualities, especially for experienced users. Moreover, for cold start users, the interpersonal interest similarity and interpersonal influence can enhance the intrinsic link among features in the latent space. We conduct a series of experiments on three rating datasets: Yelp, MovieLens, and Douban Movie. Experimental results show the proposed approach outperforms the existing RS approaches.
Keywords :
recommender systems; social networking (online); Douban Movie; MovieLens; RS; Yelp; cold start problem; interpersonal influence; interpersonal interest similarity; intrinsic link; latent space; personalized recommendation; recommender system; social circle; social factors; social network; sparsity problem; user interest; Context modeling; Linear programming; Predictive models; Probabilistic logic; Social factors; Social network services; Vectors; Data mining; Interpersonal influence; Personalization; Social networking; personal interest; recommender system; social networks;