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Impact of Information based Classification on Network Epidemics

机译:基于信息的分类对网络流行病的影响

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Formulating mathematical models for accurate approximation of malicious propagation in a network is a difficult process because of our inherent lack of understanding of several underlying physical processes that intrinsically characterize the broader picture. The aim of this paper is to understand the impact of available information in the control of malicious network epidemics. A 1-n-n-1 type differential epidemic model is proposed, where the differentiality allows a symptom based classification. This is the first such attempt to add such a classification into the existing epidemic framework. The model is incorporated into a five class system called the DifEpGoss architecture. Analysis reveals an epidemic threshold, based on which the long-term behavior of the system is analyzed. In this work three real network datasets with 22002, 22469 and 22607 undirected edges respectively, are used. The datasets show that classification based prevention given in the model can have a good role in containing network epidemics. Further simulation based experiments are used with a three category classification of attack and defense strengths, which allows us to consider 27 different possibilities. These experiments further corroborate the utility of the proposed model. The paper concludes with several interesting results.
机译:制定用于准确逼近网络中恶意传播的数学模型是一个困难的过程,因为我们对本居民表征更广泛的底层物理过程的固有缺乏了解。本文的目的是了解可用信息在恶意网络流行病中的影响。提出了一种1-N-N-1型差分流行病模型,其中差异允许基于症状的分类。这是第一次将这样的分类添加到现有流行框架中的这种尝试。该模型被纳入一个名为DifepGoss架构的五类系统中。分析揭示了流行病阈值,基于该系统的分析了系统的长期行为。在这项工作中,使用具有22002,22469和22607分别的三个真正的网络数据集。数据集显示,模型中基于分类的预防可以在包含网络流行中具有良好的作用。基于仿真的实验与攻击和防御优势的三类分类一起使用,这使我们能够考虑27种不同的可能性。这些实验进一步证实了所提出的模型的效用。本文结束了几种有趣的结果。

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