基于社会信任的网络社区好友推荐“受邀论文”

S. Nepal, Cécile Paris, Payam Aghaei Pour, S. Bista, J. Freyne
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引用次数: 18

摘要

将志同道合的人联系起来的建议可以增加在线社区成员之间的参与度,从而在其可持续性方面发挥重要作用。我们开发了一套推荐朋友的算法,使用一种叫做trust的社会信任模型。在信任中,个体成员的社会信任来源于他们在社区中的行为。我们的好友推荐算法的独特之处在于,它们通过(a)区分被动和主动行为,(b)将行为分类为对用户的受欢迎程度或参与度有贡献的行为,以及(c)在各种环境中考虑不同的成员活动来捕捉不同的行为。在本文中,我们提出了基于社会信任的推荐算法,并将其与基于社交图的算法(如Friends-Of-A-Friend)进行了比较。我们使用了从CSIRO在线健康饮食门户网站收集的数据,该网站已在12周内由5000多名澳大利亚人试用。我们的研究结果表明,基于社会信任的推荐算法优于基于社会图谱的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A social trust based friend recommender for online communities “invited paper”
Recommendations to connect like-minded people can result in increased engagement amongst members of online communities, thus playing an important role in their sustainability. We have developed a suite of algorithms for friend recommendations using a social trust model called STrust. In STrust, the social trust of individual members is derived from their behaviours in the community. The unique features of our friend recommendation algorithms are that they capture different behaviours by (a) distinguishing between passive and active behaviours, (b) classifying behaviours as contributing to users' popularity or engagement and (c) considering different member activities in a variety of contexts. In this paper, we present our social trust based recommendation algorithms and evaluate them against algorithms based on the social graph (such as Friends-Of-A-Friend). We use data collected from the online CSIRO Total Wellbeing Diet portal which has been trialled by over 5,000 Australians over a 12 week period. Our results show that social trust based recommendation algorithms outperform social graph based algorithms.
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