Abstract

User influence is a very important factor for microblog user recommendation in mobile social network. However, most existing user influence analysis works ignore user’s temporal features and fail to filter the marketing users with low influence, which limits the performance of recommendation methods. In this paper, a Tensor Factorization based User Cluster (TFUC) model is proposed. We firstly identify latent influential users by neural network clustering. Then, we construct a features tensor according to latent influential user’s opinion, activity, and network centrality information. Furthermore, user influences are predicted by the latent factors resulting from the temporal restrained CP decomposition. Finally, we recommend microblog users considering both user influence and content similarity. Our experimental results show that the proposed model significantly improves recommendation performance. Meanwhile, the mean average precision of TFUC outperforms the baselines with 3.4% at least.

Highlights

  • Microblogging services, such as Twitter or Weibo, have been one of the most popular platforms for individuals to exchange information by posting messages or comments in up to 140 characters

  • This is an extension of our previous work [18], in which we proposed a tensor factorization based user influence analysis method

  • We addressed the problem of recommending users in mobile social network and claimed that user influence is a very important factor for user recommendation

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Summary

Introduction

Microblogging services, such as Twitter or Weibo, have been one of the most popular platforms for individuals to exchange information by posting messages or comments in up to 140 characters. With the rapid growth of mobile devices, microblog has created mobile applications to provide their users instant and real-time access from anywhere they can access to the Internet. As a result of the rapid increasing population on microblog platform, most users are confronted with the serious problem of information overload [1]. It is extremely difficult to find desirable information using mobile devices. In this situation, recommending relevant users for alleviating the flooding of information appears to be very significant for the users [2]

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