在大型图形中利用相关性集阻断谣言

Fangsong Xiang, Jinghao Wang, Yanping Wu, Xiaoyang Wang, Chen Chen, Ying Zhang
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引用次数: 0

摘要

在线社交网络为信息传播提供了便利,而谣言也会广泛而迅速地传播,可能会误导一些用户。因此,抑制谣言传播成了一项艰巨的任务。其中一种被广泛使用的方法是,在社交网络中选择用户传播真相,与谣言竞争,使用户在收到谣言之前先收到真相,从而不再相信或传播谣言。然而,现有的工作只是为了加快封堵谣言的速度,而没有考虑用户的针对性。例如,考虑到社交媒体平台运营商旨在提高用户的网络安全。根据用户的上网行为,应首先提醒高风险用户。受此启发,我们正式定义了带相关性集的谣言阻断(RBP)问题,其目的是找到一个真相种子集,使受真相影响的节点数量最大化,并确保相关性集内受影响的节点数量至少达到给定的阈值。为了解决这个问题,我们设计了一种具有局部和全局阶段的混合贪婪框架(HGF)算法。我们证明,HGF 可以提供高概率的((1-1/e-\epsilon )\)近似解,同时降低采样过程的成本。在 8 个真实社交网络上进行的大量实验证明了我们提出的算法的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Rumor blocking with pertinence set in large graphs

Rumor blocking with pertinence set in large graphs

Online social networks facilitate the spread of information, while rumors can also propagate widely and fast, which may mislead some users. Therefore, suppressing the spread of rumors has become a daunting task. One of the widely used approaches is to select users in the social network to spread the truth and compete against the rumor, so that users who receive the truth before receiving rumors will not trust or propagate the rumor. However, the existing works only aim to speed up blocking rumors without considering the pertinency of users. For example, consider a social media platform operator aiming to enhance user online safety. Based on the user’s online behavior, the users who are at high risk should be alerted first. Motivated by this, we formally define the rumor blocking with pertinence set (RBP) problem, which aims to find a truth seed set that maximizes the number of nodes affected by truth and ensures that the number of influenced nodes within the pertinence set reaches at least a given threshold. To solve this problem, we design a hybrid greedy framework (HGF) algorithm with local and global phases. We prove that HGF can provide a \((1-1/e-\epsilon )\)-approximate solution with high probability while reducing the cost of the sampling process. Extensive experiments on 8 real social networks demonstrate the efficiency and effectiveness of our proposed algorithms.

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