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AIM: Activation increment minimization strategy for preventing bad information diffusion in OSNs

机译:目标:激活增量最小化策略,用于防止不良信息在OSN中扩散

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The openness and virtuality of Online Social Networks (OSNs) make it a hotbed of rapid propagation for various kinds of frauds and erroneous information. Ergo, there is an exigent need to find a method that can expeditiously and efficaciously limit the diffusion of misinformation in OSNs. To resolve this issue, this article proposes the utilization of Activation Increment engendered by a node as a criterion to quantify the importance of the node. Even if the propagation probabilities between the nodes are identically tantamount, due to the dynamics of information propagation and high connectivity of the network, the activation probabilities of nodes are different. The Activation Increment describes the sum of activation probabilities of a node's neighbors while the node itself is in a different state (infected status, recovered status) at a certain time. To utilize Activation Increment, this paper proposes Activation Increment Minimization (AIM) strategy to select and block nodes for information diffusion. Experiments based on the real social network dataset attested that the proposed AIM strategy is superior to the traditional heuristic algorithms. (C) 2018 Published by Elsevier B.V.
机译:在线社交网络(OSN)的开放性和虚拟性使其成为各种欺诈和错误信息快速传播的温床。因此,迫切需要找到一种可以迅速有效地限制OSN中错误信息传播的方法。为了解决此问题,本文提出了利用节点产生的激活增量作为量化节点重要性的标准。即使节点之间的传播概率相同,由于信息传播的动态性和网络的高连接性,节点的激活概率也不同。激活增量描述了某个节点自身在特定时间处于不同状态(感染状态,恢复状态)时,其邻居的激活概率之和。为了利用激活增量,本文提出了激活增量最小化(AIM)策略来选择和阻止节点进行信息传播。基于真实社交网络数据集的实验证明,提出的AIM策略优于传统的启发式算法。 (C)2018由Elsevier B.V.发布

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