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Modeling and analyzing malware propagation in social networks with heterogeneous infection rates

机译:非均相感染率建模与分析社交网络中的恶意软件传播

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With the rapid development of social networks, hackers begin to try to spread malware more widely by utilizing various kinds of social networks. Thus, studying malware epidemic dynamics in these networks is becoming a popular subject in the literature. Most of the previous works focus on the effects of factors, such as network topology and user behavior, on malware propagation. Some researchers try to analyze the heterogeneity of infection rates, but the common problem of their works is the factors they mentioned that could affect the heterogeneity are not comprehensive enough. In this paper, focusing on the effects of heterogeneous infection rates, we propose a novel model called HSID (heterogeneous-susceptible-infectious-dormant model) to characterize virus propagation in social networks, in which a connection factor is presented to evaluate the heterogeneous relationships between nodes, and a resistance factor is introduced to represent node's mutable resistant ability. We analyzed how key parameters in the two factors affect the heterogeneity and then performed simulations to explore the effects in three real-world social networks. The results indicate: heterogeneous relationship could lead to wider diffusion in directed network, and heterogeneous security awareness could lead to wider diffusion in both directed and undirected networks; heterogeneous relationship could restrain the outbreak of malware but heterogeneous initial security awareness would increase the probability; furthermore, the increasing resistibility along with infected times would lead to malware's disappearance in social networks. (C) 2018 Elsevier B.V. All rights reserved.
机译:随着社交网络的快速发展,黑客开始尝试通过利用各种社交网络更广泛地传播恶意软件。因此,在这些网络中研究恶意软件流行性动态正在成为文献中的受欢迎的主题。大多数以前的作品侧重于对恶意软件传播的因素的影响,例如网络拓扑和用户行为。一些研究人员试图分析感染率的异质性,但其作品的常见问题是他们提到的因素可能影响异质性并不足够全面。在本文中,专注于异质感染率的影响,我们提出了一种新型型号,称为HSID(异质易感 - 感染性 - 休眠模型),以表征社交网络中的病毒传播,其中提出了一种连接因子来评估异构关系在节点之间,引入电阻因子以表示节点的可变抗性能力。我们分析了两种因素中的关键参数如何影响异质性,然后执行模拟以探索三个真实社交网络中的效果。结果表明:异构关系可能导致导向网络中更广泛的扩散,异构安全意识可能导致指向和无向网络中的更广泛的扩散;异构关系可以抑制恶意软件的爆发,但异构的初始安全意识会增加概率;此外,随着感染时间的耐药性的增加将导致恶意软件在社交网络中的消失。 (c)2018年elestvier b.v.保留所有权利。

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