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Efficient targeted influence minimization in big social networks

机译:高社交网络中有效的目标影响最小化

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An online social network can be used for the diffusion of malicious information like derogatory rumors, disinformation, hate speech, revenge pornography, etc. This motivates the study of influence minimization that aim to prevent the spread of malicious information. Unlike previous influence minimization work, this study considers the influence minimization in relation to a particular group of social network users, called targeted influence minimization. Thus, the objective is to protect a set of users, called target nodes, from malicious information originating from another set of users, called active nodes. This study also addresses two fundamental, but largely ignored, issues in different influence minimization problems: (ⅰ) the impact of a budget on the solution; (ⅱ) robust sampling. To this end, two scenarios are investigated, namely unconstrained and constrained budget. Given an unconstrained budget, we provide an optimal solution; Given a constrained budget, we show the problem is NP-hard and develop a greedy algorithm with an (1-1/e)-approximation. More importantly, in order to solve the influence minimization problem in large, real-world social networks, we propose a robust sampling-based solution with a desirable theoretic bound. Extensive experiments using real social network datasets offer insight into the effectiveness and efficiency of the proposed solutions.
机译:在线社交网络可以用于恶意信息的扩散,如贬义谣言,虚假信息,仇恨语音,复仇色情等。这激励了对影响最小化的影响,这旨在防止恶意信息传播。与以前的影响最小化工作不同,本研究考虑了与特定的社交网络用户组的影响最小化,称为目标影响最小化。因此,目的是保护一组名为目标节点的用户,该用户来自源自另一组用户的恶意信息,称为活动节点。本研究还解决了两个基本,但在很大程度上忽略了不同影响最小化问题的问题:(Ⅰ)预算对解决方案的影响; (Ⅱ)鲁棒采样。为此,调查了两种情况,即无约束和约束预算。鉴于无限制的预算,我们提供了最佳解决方案;鉴于预算限制,我们展示了问题是NP - 硬,并使用(1-1 / e)的贪婪算法 - 达到困难。更重要的是,为了解决大型现实世界网络中的影响最小化问题,我们提出了一种基于鲁棒的采样的解决方案,具有理想的理论界限。使用真正的社交网络数据集进行广泛的实验,可以深入了解提出的解决方案的有效性和效率。

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