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Bringing consistency to simulation of population models - Poisson simulation as a bridge between micro and macro simulation

机译:为人口模型的仿真带来一致性-泊松仿真是微观和宏观仿真之间的桥梁

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摘要

Population models concern collections of discrete entities such as atoms, cells, humans, animals, etc., where the focus is on the number of entities in a population. Because of the complexity of such models, simulation is usually needed to reproduce their complete dynamic and stochastic behaviour. Two main types of simulation models are used for different purposes, namely micro-simulation models, where each individual is described with its particular attributes and behaviour, and macro-simulation models based on stochastic differential equations, where the population is described in aggregated terms by the number of individuals in different states. Consistency between micro- and macro-models is a crucial but often neglected aspect. This paper demonstrates how the Poisson Simulation technique can be used to produce a population macro-model consistent with the corresponding micro-model. This is accomplished by defining Poisson Simulation in strictly mathematical terms as a series of Poisson processes that generate sequences of Poisson distributions with dynamically varying parameters. The method can be applied to any population model. It provides the unique stochastic and dynamic macro-model consistent with a correct micro-model. The paper also presents a general macro form for stochastic and dynamic population models. In an appendix Poisson Simulation is compared with Markov Simulation showing a number of advantages. Especially aggregation into state variables and aggregation of many events per time-step makes Poisson Simulation orders of magnitude faster than Markov Simulation. Furthermore, you can build and execute much larger and more complicated models with Poisson Simulation than is possible with the Markov approach. (C) 2007 Elsevier Inc. All rights reserved.
机译:总体模型涉及离散实体(例如原子,细胞,人类,动物等)的集合,其中重点关注总体中实体的数量。由于此类模型的复杂性,通常需要进行仿真以重现其完整的动态和随机行为。两种主要类型的仿真模型用于不同目的,分别是微观仿真模型(其中每个人都有其特定的属性和行为来描述)以及基于随机微分方程的宏观仿真模型,其中总体用以下公式表示:不同州的个人人数。微观模型和宏观模型之间的一致性是一个至关重要但经常被忽视的方面。本文演示了如何使用泊松仿真技术来生成与相应的微观模型相一致的总体宏模型。这是通过严格地将数学上的泊松模拟定义为一系列泊松过程来完成的,这些泊松过程生成具有动态变化参数的泊松分布序列。该方法可以应用于任何人口模型。它提供了与正确的微观模型相一致的独特的随机和动态宏观模型。本文还提出了随机和动态人口模型的一般宏形式。在附录中,将Poisson Simulation与Markov Simulation进行了比较,显示出许多优点。尤其是聚集到状态变量中以及每个时间步长聚集许多事件,使得Poisson Simulation比Markov Simulation快了几个数量级。此外,与Markov方法相比,使用Poisson Simulation可以构建和执行更大,更复杂的模型。 (C)2007 Elsevier Inc.保留所有权利。

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