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Trust Inference Computation for Online Social Networks

机译:在线社交网络的信任推理计算

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摘要

Trust has become one of the most important issues in online social Networks. In fact, the basic idea of trust systems is to help users and allow them to rate each other even without being direct neighbors. In this case, the idea is to derive a trust value for a given user, which can assist other users in deciding whether a given user is trustful or not. We investigate the properties of trust propagation on networks, based on the notion of transitivity, and we introduce the TISoN model to generate and evaluate Trust Inference within online Social Networks. This paper highlights on these two main contributions: (i) a novel Trust Paths' Searching algorithm where we define neighbors priority based on their direct trust degrees and then select trusted paths while controlling the path length, (ii) a Trust Inference Measuring algorithm TIM to build a trust network. Experimental results with data from the Advogato.com show that our work generates high quality results.
机译:信任已成为在线社交网络中最重要的问题之一。事实上,信任系统的基本思想是帮助用户并允许它们彼此评分,即使在不直接邻居而不是直接邻居。在这种情况下,该想法是导出给定用户的信任值,这可以帮助其他用户决定给定用户是否可信赖。我们根据转运概念调查网络上信任传播的属性,我们介绍了在线社交网络中生成和评估信任推理的Tison模型。本文突出了这两个主要贡献:(i)一种新型信任路径的搜索算法,我们基于其直接信任度定义邻居优先级,然后在控制路径长度的同时选择可信路径,(ii)信赖推理测量算法inc构建信任网络。来自Advogato.com的数据的实验结果表明,我们的工作会产生高质量的结果。

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