D. V. Pham, Hieu V. Duong, Canh V. Pham, Bao Q. Bui, Anh V. Nguyen
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引用次数: 3
摘要
误传防范因其对用户群体的重要作用而备受关注。然而,最近的研究忽视了误传话题在信息传播过程中的影响。事实上,错误信息的传播取决于它们的主题。因此,为了提高防范虚假信息的有效性,我们需要考虑话题在信息传播中的作用。本文通过移除一组节点来研究考虑错误信息源主题的错误信息拦截问题,称为MTMB问题。我们证明了MTMB是NP-hard的,目标函数是一个单调的次模函数。在此基础上,我们提出了一种贪心算法(GA),它提供了一个近似比$\left( {1 - 1/\sqrt e } \right)$。我们进一步提出了一种可扩展贪婪算法(Scalable Greedy Algorithm, SGA),这是一种基于有效估计目标函数来加速遗传算法的高效算法。在网络上进行的实验表明,所提算法的有效性和运行时间优于其他方法。
Multiple Topics Misinformation blocking in Online Social Networks
Misinformation prevention has received much attention due to its important role to user community. However, recent studies ignore the influence of the topics of misinformation in the process of information dissemination. In fact, the spread of propagation of misinformation depends on their topics. Therefore, in order to improve the effectiveness of preventing false information, we need to consider the effect of topics in information dissemination.In this paper, we study the problem of misinformation blocking which considers topics of misinformation sources by removing a set of nodes, called MTMB problem. We show that MTMB is NP-hard and the objective function is a monotone and submodular function. Based on that, we propose a Greedy Algorithm (GA), which provides a approximation ratio of $\left( {1 - 1/\sqrt e } \right)$. We further propose a Scalable Greedy Algorithm (SGA), an efficient algorithm based on speeding up the GA by effective estimating the objective function. Experiments are conducted on networks showing the effectiveness and running time of the proposed algorithms which outperform other methods.