Content recommendation by analyzing user behavior in online health communities

Hangzhou Yang, Zhijun Yan

    科研成果: 会议稿件论文同行评审

    摘要

    Online health communities (OHCs) are the platforms for patients and their care-givers to search and share health-related information, and have attracted a vast amount of users in recent years. However, health consumers are easily overwhelmed by the overloaded information in OHCs, which makes it inefficient for users to find contents of their interest. This study proposes a framework for content recommendation by analyzing user activities in OHCs that utilizes social network analysis and text mining technology. We model users' activities by constructing user behavior networks that capture implicit interactions of users, based on which closely related users are detected and user similarities are calculated. Text analysis are performed using topic model to select the threads for final content recommendation. Based on the data collected from a famous Chinese OHCs, we expect that our model could achieve promising results.

    源语言英语
    出版状态已出版 - 2019
    活动23rd Pacific Asia Conference on Information Systems: Secure ICT Platform for the 4th Industrial Revolution, PACIS 2019 - Xi'an, 中国
    期限: 8 7月 201912 7月 2019

    会议

    会议23rd Pacific Asia Conference on Information Systems: Secure ICT Platform for the 4th Industrial Revolution, PACIS 2019
    国家/地区中国
    Xi'an
    时期8/07/1912/07/19

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