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Markov Random Fields for Malware Propagation: The Case of Chain Networks

机译:恶意软件传播的马尔可夫随机域:链网络的案例

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摘要

Epidemic and stochastic models have been employed for describing the dynamic behavior of malware outbreaks. However, most of them lack a holistic treatment of the problem. In this work, we model malware propagation as a Markov Random Field and employ Gibbs sampling for the analysis of the system. We demonstrate the proposed framework for the case of a chain network, a model often emerging in both wired and wireless multi-hop networks.
机译:流行和随机模型已用于描述恶意软件爆发的动态行为。但是,大多数人对此问题缺乏全面的处理。在这项工作中,我们将恶意软件传播建模为马尔可夫随机场,并采用Gibbs采样进行系统分析。我们演示了链网络情况下的建议框架,该模型经常在有线和无线多跳网络中出现。

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