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A Credibility-Based Analysis of Information Diffusion in Social Networks

机译:基于信誉基于社交网络信息扩散的分析

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Social networks have many advantages and they are very popular. The number of people having at least one account on a certain social network has grown considerably. Social networks allow people to connect and interact more easily with one another, leading to a much easier way to obtain information. However one major disadvantage of social networks is that some information may be untrue. In this paper we propose a protocol in which the network becomes more immune to the diffusion of false information. Our approach is based on evidence theory with Dempster-Shafer and Yager's rule which plays an important role in an individual's decision whether to send further the received information or not. We also took into consideration the confidence degree of the neighbours regarding the information which is spread by a specific source node. Furthermore, we propose a simulation algorithm that allows us to observe the diffusion of two contradictory information spread by two different source nodes. The experimental results show that the true information spreads more easily if the ground truth is sometimes revealed, even rarely.
机译:社交网络有许多优势,它们非常受欢迎。在某个社交网络上至少有一个帐户的人数已经大大增加。社交网络允许人们更轻松地相互连接和交互,从而更容易获取信息。然而,社交网络的一个主要缺点是一些信息可能是不真实的。在本文中,我们提出了一种协议,其中网络对虚假信息的扩散变得更加免疫。我们的方法是基于Dempster-Shafer和Yager的规则基于证据理论,在个人的决定中在个人的决定中发挥着重要作用。我们还考虑到邻居对特定源节点传播的信息的置信度。此外,我们提出了一种模拟算法,其允许我们观察两个不同源节点的两个矛盾信息的扩散。实验结果表明,如果有时揭示了基础事实,真正的信息更容易蔓延,甚至很少。

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