Bayesian Inferences and Forecasting in Spatial Time Series Models

Sung Duck Lee, Duck-Ki Kim
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引用次数: 1

Abstract

The spatial time series data can be viewed as a set of time series collected simultaneously at a number of spatial locations with time. For example, The Mumps data have a feature to infect adjacent broader regions in accordance with spatial location and time. Therefore, The spatial time series models have many parameters of space and time. In this paper, We propose the method of bayesian inferences and prediction in spatial time series models with a Gibbs Sampler in order to overcome convergence problem in numerical methods. Our results are illustrated by using the data set of mumps cases reported from the Korea Center for Disease Control and Prevention monthly over the years 2001-2009, as well as a simulation study.
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空间时间序列模型中的贝叶斯推断与预测
空间时间序列数据可以看作是在多个空间位置随时间同时采集的一组时间序列。例如,腮腺炎数据具有根据空间位置和时间感染邻近更广泛区域的特征。因此,空间时间序列模型具有许多时空参数。为了克服数值方法的收敛性问题,提出了基于Gibbs采样器的空间时间序列模型的贝叶斯推理和预测方法。我们的结果是通过使用2001-2009年韩国疾病控制和预防中心每月报告的腮腺炎病例数据集以及模拟研究来说明的。
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