School of Computer Engineering and Science, Shanghai University, Shanghai, 200444, China.
Shanghai Lixin University of Accounting and Finance, Shanghai, 201209, China.
Sci Rep. 2022 Mar 31;12(1):5467. doi: 10.1038/s41598-022-09229-2.
The rapid development of social networking platforms has accelerated the spread of false information. Effective source location methods are essential to control the spread of false information. Most existing methods fail to make full use of the infection of neighborhood information in nodes, resulting in a poor source localization effect. In addition, most existing methods ignore the existence of multiple source nodes in the infected cluster and hard to identify the source nodes comprehensively. To solve these problems, we propose a new method about the multiple sources location with the neighborhood entropy. The method first defines the two kinds of entropy, i.e. infection adjacency entropy and infection intensity entropy, depending on whether neighbor nodes are infected or not. Then, the possibility of a node is evaluated by the neighborhood entropy. To locate the source nodes comprehensively, we propose a source location algorithm with the infected clusters. Other unrecognized source nodes in the infection cluster are identified by the cohesion of nodes, which can deal with the situation in the multiple source nodes in an infected cluster. We conduct experiments on various network topologies. Experimental results show that the two proposed algorithms outperform the existing methods.
社交网络平台的快速发展加速了虚假信息的传播。有效的源定位方法对于控制虚假信息的传播至关重要。大多数现有方法未能充分利用节点中邻居信息的感染性,导致源定位效果不佳。此外,大多数现有方法忽略了感染集群中存在多个源节点的情况,难以全面识别源节点。为了解决这些问题,我们提出了一种基于邻居熵的多源定位新方法。该方法首先根据邻居节点是否被感染定义了两种熵,即感染邻接熵和感染强度熵。然后,通过邻居熵评估节点的可能性。为了全面定位源节点,我们提出了一种具有感染簇的源定位算法。通过节点的内聚性识别感染簇中其他未被识别的源节点,从而可以处理感染簇中存在多个源节点的情况。我们在各种网络拓扑结构上进行了实验。实验结果表明,所提出的两种算法优于现有方法。