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Estimating likelihoods for spatio-temporal models using importance sampling

机译:使用重要性抽样估计时空模型的可能性

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This paper describes how importance sampling can be applied to estimate likelihoods for spatio-temporal stochastic models of epidemics in plant populations, where observations consist of the set of diseased individuals at two or more distinct times. Likelihood computation is problematic because of the inherent lack of independence of the status of individuals in the population whenever disease transmission is distance-dependent. The methods of this paper overcome this by partitioning the population into a number of sectors and then attempting to take account of this dependence within each sector, while neglecting that between-sectors. Application to both simulated and real epidemic data sets show that the techniques perform well in comparison with existing approaches. Moreover, the results confirm the validity of likelihood estimates obtained elsewhere using Markov chain Monte Carlo methods.
机译:本文介绍了重要性采样如何应用于植物种群中流行病的时空随机模型的估计可能性,其中观察包括两个或两个以上不同时间的患病个体的集合。由于疾病传播与距离有关,因此人口中个体的内在缺乏固有的独立性,因此可能性计算存在问题。本文的方法通过将人口划分为多个部门,然后尝试忽略每个部门之间的这种依赖性来克服这一问题,从而克服了这一问题。在模拟和实际流行数据集上的应用表明,与现有方法相比,该技术表现良好。此外,结果证实了使用马尔可夫链蒙特卡罗方法在其他地方获得的似然估计的有效性。

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