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      Beyond Personalization: Social Content Recommendation for Creator Equality and Consumer Satisfaction

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          Abstract

          An effective content recommendation in modern social media platforms should benefit both creators to bring genuine benefits to them and consumers to help them get really interesting content. In this paper, we propose a model called Social Explorative Attention Network (SEAN) for content recommendation. SEAN uses a personalized content recommendation model to encourage personal interests driven recommendation. Moreover, SEAN allows the personalization factors to attend to users' higher-order friends on the social network to improve the accuracy and diversity of recommendation results. Constructing two datasets from a popular decentralized content distribution platform, Steemit, we compare SEAN with state-of-the-art CF and content based recommendation approaches. Experimental results demonstrate the effectiveness of SEAN in terms of both Gini coefficients for recommendation equality and F1 scores for recommendation performance.

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          Neural Collaborative Filtering

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            Bandit Based Monte-Carlo Planning

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              Dynamic Attention Deep Model for Article Recommendation by Learning Human Editors' Demonstration

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                Author and article information

                Journal
                28 May 2019
                Article
                1905.11900
                7930e09e-acb5-4e1d-ba98-02d8d34132c1

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                Aceepted by SIGKDD 2019
                cs.IR cs.SI

                Social & Information networks,Information & Library science
                Social & Information networks, Information & Library science

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