Krishnarajah Isthrinayagy, Cook Alex, Marion Glenn, Gibson Gavin
Department of Actuarial Mathematics and Statistics, Heriot-Watt University, Edinburgh EH14 4AS, United Kingdom.
Bull Math Biol. 2005 Jul;67(4):855-73. doi: 10.1016/j.bulm.2004.11.002. Epub 2004 Dec 15.
Moment closure approximations are used to provide analytic approximations to non-linear stochastic population models. They often provide insights into model behaviour and help validate simulation results. However, existing closure schemes typically fail in situations where the population distribution is highly skewed or extinctions occur. In this study we address these problems by introducing novel second- and third-order moment closure approximations which we apply to the stochastic SI and SIS epidemic models. In the case of the SI model, which has a highly skewed distribution of infection, we develop a second-order approximation based on the beta-binomial distribution. In addition, a closure approximation based on mixture distribution is developed in order to capture the behaviour of the stochastic SIS model around the threshold between persistence and extinction. This mixture approximation comprises a probability distribution designed to capture the quasi-equilibrium probabilities of the system and a probability mass at 0 which represents the probability of extinction. Two third-order versions of this mixture approximation are considered in which the log-normal and the beta-binomial are used to model the quasi-equilibrium distribution. Comparison with simulation results shows: (1) the beta-binomial approximation is flexible in shape and matches the skewness predicted by simulation as shown by the stochastic SI model and (2) mixture approximations are able to predict transient and extinction behaviour as shown by the stochastic SIS model, in marked contrast with existing approaches. We also apply our mixture approximation to approximate a likelihood function and carry out point and interval parameter estimation.
矩封闭近似用于为非线性随机种群模型提供解析近似。它们常常能深入了解模型行为,并有助于验证模拟结果。然而,现有的封闭方案在种群分布高度偏态或出现灭绝情况时通常会失效。在本研究中,我们通过引入新颖的二阶和三阶矩封闭近似来解决这些问题,并将其应用于随机SI和SIS流行病模型。对于具有高度偏态感染分布的SI模型,我们基于贝塔二项分布开发了一种二阶近似。此外,还开发了一种基于混合分布的封闭近似,以捕捉随机SIS模型在持续存在和灭绝阈值附近的行为。这种混合近似包括一个旨在捕捉系统准平衡概率的概率分布和一个位于0处的概率质量,它代表灭绝的概率。考虑了这种混合近似的两个三阶版本,其中对数正态分布和贝塔二项分布用于模拟准平衡分布。与模拟结果的比较表明:(1)贝塔二项近似在形状上具有灵活性,并且与随机SI模型所示的模拟预测的偏度相匹配;(2)混合近似能够预测随机SIS模型所示的瞬态和灭绝行为,这与现有方法形成显著对比。我们还将我们的混合近似应用于近似似然函数,并进行点估计和区间参数估计。