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Reducing Spreading Processes on Networks to Markov Population Models

机译:将网络上的传播过程减少为马尔可夫种群模型

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Stochastic processes on complex networks, where each node is in one of several compartments, and neighboring nodes interact with each other, can be used to describe a variety of real-world spreading phenomena. However, computational analysis of such processes is hindered by the enormous size of their underlying state space. In this work, we demonstrate that lumping can be used to reduce any epidemic model to a Markov Population Model (MPM). Therefore, we propose a novel lumping scheme based on a partitioning of the nodes. By imposing different types of counting abstractions, we obtain coarsegrained Markov models with a natural MPM representation that approximate the original systems. This makes it possible to transfer the rich pool of approximation techniques developed for MPMs to the computational analysis of complex networks' dynamics. We present numerical examples to investigate the relationship between the accuracy of the MPMs, the size of the lumped state space, and the type of counting abstraction.
机译:复杂网络上的随机过程(其中每个节点位于几个隔离专区之一中,并且相邻节点彼此交互)可用于描述各种现实世界中的传播现象。但是,此类过程的计算分析受到其基础状态空间的巨大限制。在这项工作中,我们证明集总可以用来将任何流行病模型减少为马尔可夫种群模型(MPM)。因此,我们提出了一种基于节点划分的新颖集总方案。通过施加不同类型的计数抽象,我们获得了具有近似原始系统的自然MPM表示的粗粒度Markov模型。这使得将为MPM开发的丰富的近似技术池转移到复杂网络动力学的计算分析成为可能。我们提供了一些数值示例来研究MPM的精度,集总状态空间的大小以及计数抽象类型之间的关系。

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