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Retweet Prediction Using Social-Aware Probabilistic Matrix Factorization

Published: 11 June 2018 Publication History
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  • Abstract

    Retweet prediction is a fundamental and crucial task in social networking websites as it may influence the process of information diffusion. Existing prediction approaches simply ignore social contextual information or don’t take full advantage of these potential factors, damaging the performance of prediction. Besides, the sparsity of retweet data also severely disturb the performance of these models. In this paper, we propose a novel retweet prediction model based on probabilistic matrix factorization method by integrating the observed retweet data, social influence and message semantic to improve the accuracy of prediction. Finally, we incorporate these social contextual regularization terms into the objective function. Comprehensive experiments on the real-world dataset clearly validate both the effectiveness and efficiency of our model compared with several state-of the-art baselines.

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          cover image Guide Proceedings
          Computational Science – ICCS 2018: 18th International Conference, Wuxi, China, June 11–13, 2018, Proceedings, Part I
          Jun 2018
          719 pages
          ISBN:978-3-319-93697-0
          DOI:10.1007/978-3-319-93698-7

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          Springer-Verlag

          Berlin, Heidelberg

          Publication History

          Published: 11 June 2018

          Author Tags

          1. Social network
          2. Retweet prediction
          3. Matrix factorization
          4. Social influence
          5. Message semantic

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