社交网络如何帮助我们衡量在线信任?

Wei-Lun Chang, Arleen N. Diaz
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引用次数: 1

摘要

信息过载是一个日益严重的问题,随着可用信息数量的不断增长,目前的过滤技术被证明是低效的。社交网络用户和一般人倾向于优先考虑来自他们熟悉的人的推荐。本研究提出了一个信任模型,该模型将在具有社交网络功能的在线评级系统上估计内容创作者的信任值。本研究引入了社交距离的概念,该概念来自于应用于社交网络用户群的聚类方法,并将所述距离纳入信任估计以及用户生成评级中。估计的信任值将作为基于创建者的可信度对任何类型的内容进行过滤和排序的度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Can Social Networks Help Us Measure Trust Online?
Information overload is an increasing problem, and as information available continues to grow in volume, current filtering techniques are proving inefficient. Social network users, and people in general, tend to prioritize recommendations coming from people they are acquainted to. This research proposes a trust model that will estimate a trust value for content creators on an online rating system with social network capabilities. This research introduces the concept of social distance, which is drawn from clustering methods applied to the social network user base, and incorporates said distance in the estimation of trust, as well as user generated ratings. The trust value estimated will serve as a metric for filtering and sorting content of any kind based on the trustworthiness of the creator.
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