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Optimized Gillespie algorithms for the simulation of Markovian epidemic processes on large and heterogeneous networks

机译:大型和异构网络上马尔维亚流行过程仿真的优化吉列算法

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Numerical simulation of continuous-time Markovian processes is an essential and widely applied tool in the investigation of epidemic spreading on complex networks. Due to the high heterogeneity of the connectivity structure through which epidemic is transmitted, efficient and accurate implementations of generic epidemic processes are not trivial and deviations from statistically exact prescriptions can lead to uncontrolled biases. Based on the Gillespie algorithm (GA), in which only steps that change the state are considered, we develop numerical recipes and describe their computer implementations for statistically exact and computationally efficient simulations of generic Markovian epidemic processes aiming at highly heterogeneous and large networks. The central point of the recipes investigated here is to include phantom processes, that do not change the states but do count for time increments. We compare the efficiencies for the susceptible infected susceptible, contact process and susceptible infected recovered models, that are particular cases of a generic model considered here. We numerically confirm that the simulation outcomes of the optimized algorithms are statistically indistinguishable from the original GA and can be several orders of magnitude more efficient. (C) 2017 Elsevier B.V. All rights reserved.
机译:连续时间马尔维亚工艺的数值模拟是在复杂网络上对疫情传播调查的基本和广泛应用的工具。由于通过其传播的连通结构的高异质性,通用流行过程的高效和准确实现不是琐碎的并且与统计上精确处方的偏差可能导致不受控制的偏差。基于Gillespie算法(GA),其中仅考虑改变状态的步骤,我们开发数值配方,并描述其计算机实现,用于统计上精确和计算高效模拟旨在高度异构和大网络的通用马尔维亚流行过程的仿真模拟。这里调查的食谱的中心点是包括幻影过程,不改变状态,但是计算时间增量。我们比较易感感染的易感,接触过程和易感感染的恢复模型的效率,这是这里考虑的普通模型的特定情况。我们在数值上证实优化算法的仿真结果与原始GA有统计学上无法区分,并且可以更有效地是几个数量级的数量级。 (c)2017 Elsevier B.v.保留所有权利。

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