Exponential growth of information generated by
online social networks demands effective recommender systems to give useful results.
Traditional techniques become unqualified because they ignore social relation
data; existing social recommendation approaches consider social network
structure, but social contextual information has not been fully considered. It
is significant and challenging to fuse social contextual factors which are
derived from users’ motivation of social behaviors into social recommendation.
In this paper, we investigate the social recommendation problem on the basis of
psychology and sociology studies, which exhibit two important factors:
individual preference and interpersonal influence. We first present the
particular importance of these two factors in online behavior prediction. Then
we propose a novel probabilistic matrix factorization method to fuse them in
latent space. We conduct experiments on both Facebook style bidirectional and
Twitter style unidirectional social network datasets. The empirical results and
analysis on these two large datasets demonstrate that our method significantly
outperforms the existing approaches.
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