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Contrasting the Spread of Misinformation in Online Social Networks

机译:对比在线社交网络中的错误信息传播

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The emergence of online social networks has revolutionized the way people seek and share information. Nowadays, popular online social sites as Twitter, Facebook and Google+ are among the major news sources as well as the most effective channels for viral marketing. However, these networks also became the most effective channel for spreading misinformation, accidentally or maliciously. The widespread diffusion of inaccurate information or fake news can lead to undesirable and severe consequences, such as widespread panic, libelous campaigns and conspiracies. In order to guarantee the trustworthiness of online social networks it is a crucial challenge to find effective strategies to contrast the spread of the misinformation in the network. In this paper we concentrate our attention on two problems related to the diffusion of misinformation in social networks: identify the misinformation sources and limit its diffusion in the network We consider a social network where some nodes have already been infected from misinformation. We first provide an heuristics to recognize the set of most probable sources of the infection. Then, we provide an heuristics to place a few monitors in some network nodes in order to control information diffused by the suspected nodes and block misinformation they injected in the network before it reaches a large part of the network. To verify the quality and efficiency of our suggested solutions, we conduct experiments on several real-world networks Empirical results indicate that our heuristics are among the most effective known in literature.
机译:在线社交网络的出现彻底改变了人们寻求和分享信息的方式。如今,流行的在线社交网站作为推特,Facebook和Google+是主要的新闻来源以及最有效的病毒营销渠道。然而,这些网络也成为最有效的渠道,用于传播错误信息,意外或恶意。不准确的信息或假新闻的广泛传播可能导致不良和严重的后果,例如广泛的恐慌,诽谤运动和阴谋。为了保证在线社交网络的可信度,找到有效的策略来对比网络中的错误信息传播是一个至关重要的挑战。在本文中,我们注意到我们注意于社交网络中错误信息传播相关的两个问题:识别错误信息来源,并限制网络中的扩散我们认为一些节点已经感染了错误信息。我们首先提供了一种启发式信息,以识别感染的最可能源的集合。然后,我们提供了一种启发式,以在某些网络节点中放置一些监视器,以便控制由疑似节点扩散的信息和它们在网络中达到网络中注入的块错误信息。为了验证我们建议解决方案的质量和效率,我们对几个现实网络的实验进行了实验结果表明,我们的启发式是文学中最有效的。

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