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Node deletion-based algorithm for blocking maximizing on negative influence from uncertain sources

机译:基于节点删除的算法阻止了不确定来源的负面影响的最大化

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摘要

The spreading of negative influence, such as epidemic, rumor, false information and computer virus, may lead to serious consequences in social networks. The issue of negative influence blocking maximization arouses intense interest of the researchers. However, in the real world social network environment, the exact source of negative influence is usually unknown. In most cases, we only know the distribution of negative seeds, which is the probability for each node to be a negative seed. In this work, we investigate the problem of maximizing the blocking on negative influence from uncertain sources. We propose the competitive influence linear threshold propagation model (CI-LTPM) for the problem. Based on the IC-LTPM model, we define the problem of uncertain negative source influence blocking maximization (UNS-IBM). We use the propagation tree in the live-edge (LE) sub-graph for estimating the influence propagation. An algorithm is proposed to calculate the blocking increments of the positive seeds based on the propagation tree in the LE sub-graph. We observed that the blocking effect of the positive seeds is the reduction on the negative influence after the positive seeds and their related edges being deleted from the LE sub-graph. Based on such observation, we propose a node deletion-based algorithm NDB (node-deletion-blocking) for solving the UNS-IBM problem. Our experiment results show that NDB can block more negative influence in less computational time than other methods. (C) 2021 Elsevier B.V. All rights reserved.
机译:消极影响的传播,如疫情,谣言,虚假信息和计算机病毒,可能导致社交网络的严重后果。负面影响堵塞最大化的问题引起了研究人员的强烈兴趣。然而,在现实世界的社交网络环境中,否定的负面影响来源通常是未知的。在大多数情况下,我们只知道负种子的分布,这是每个节点的概率为负种子。在这项工作中,我们调查从不确定来源的负面影响最大化的问题。我们提出竞争影响线性阈值传播模型(CI-LTPM)的问题。基于IC-LTPM模型,我们定义了不确定的负源影响阻塞最大化(Uns-IBM)的问题。我们在实时边缘(LE)子图中使用传播树来估计影响传播。提出了一种算法以基于LE子图中的传播树计算正种的阻塞增量。我们观察到阳性种子的阻断效果是在阳性种子和从Le子图中删除的阳性种子和其相关边缘后的负面影响的降低。基于这种观察,我们提出了一种基于节点删除的算法NDB(节点删除阻止),用于解决Uns-IBM问题。我们的实验结果表明,NDB可以在比其他方法的较少计算时间内阻断更多的负面影响。 (c)2021 elestvier b.v.保留所有权利。

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