In this paper, we present an approach for predicting trust links between peers in social media, one that is grounded in the artificial intelligence area of multiagent trust modeling. In particular, we propose a data-driven multi-faceted trust modeling which incorporates many distinct features for a comprehensive analysis. We focus on demonstrating how clustering of similar users enables a critical new functionality: supporting more personalized, and thus more accurate predictions for users. Illustrated in a trust-aware item recommendation task, we evaluate the proposed framework in the context of a large Yelp dataset. We then discuss how improving the detection of trusted relationships in social media can assist in supporting online users in their battle against the spread of misinformation and rumours, within a social networking environment which has recently exploded in popularity. We conclude with a reflection on a particularly vulnerable user base, older adults, in order to illustrate the value of reasoning about groups of users, looking to some future directions for integrating known preferences with insights gained through data analysis.
翻译:在本文中,我们提出了一个预测社交媒体同龄人之间信任联系的方法,这一方法以多试剂信任模型的人工智能领域为基础。特别是,我们提出一个数据驱动的多面信任模型,其中包含许多不同的综合分析特征。我们侧重于展示类似用户的集群如何促成一个至关重要的新功能:支持更个性化的用户群,从而为用户提供更准确的预测。在认识到信任的项目建议任务中,我们评估了在大型Yelp数据集背景下的拟议框架。然后我们讨论了如何改进对社交媒体中可信任关系的探测,以帮助在线用户在社会网络环境中与错误和谣言的传播作斗争,而社交网络环境最近已经非常受欢迎。我们最后要思考一个特别脆弱的用户群,即老年人,以说明关于用户群的推理价值,并期望今后有一些方向,将已知的偏好与通过数据分析获得的见解结合起来。