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Dynamic linear model and SARIMA: a comparison of their forecasting performance in epidemiology.

机译:动态线性模型和SARIMA:流行病学预测性能的比较。

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One goal of a public health surveillance system is to provide a reliable forecast of epidemiological time series. This paper describes a study that used data collected through a national public health surveillance system in the United States to evaluate and compare the performances of a seasonal autoregressive integrated moving average (SARIMA) and a dynamic linear model (DLM) for estimating case occurrence of two notifiable diseases. The comparison uses reported cases of malaria and hepatitis A from January 1980 to June 1995 for the United States. The residuals for both predictor models show that they were adequate tools for use in epidemiological surveillance. Qualitative aspects were considered for both models to improve the comparison of their usefulness in public health. Our comparison found that the two forecasting modelling techniques (SARIMA and DLM) are comparable when long historical data are available (at least 52 reporting periods). However, the DLM approach has some advantages, such as being more easily applied to different types of time series and not requiring a new cycle of identification and modelling when new data become available. Copyright 2001 John Wiley & Sons, Ltd.
机译:公共卫生监视系统的一个目标是提供流行病学时间序列的可靠预测。本文描述了一项研究,该研究使用了通过美国国家公共卫生监视系统收集的数据来评估和比较季节性自回归综合移动平均值(SARIMA)和动态线性模型(DLM)的性能,以估算两个案例的发生情况法定疾病。比较使用美国1980年1月至1995年6月间报告的疟疾和甲型肝炎病例。两种预测变量模型的残差都表明它们是用于流行病学监测的适当工具。两种模型都考虑了定性方面,以提高它们在公共卫生中的实用性的比较。我们的比较发现,当可获得长期历史数据(至少52个报告期)时,两种预测建模技术(SARIMA和DLM)具有可比性。但是,DLM方法具有一些优点,例如更容易应用于不同类型的时间序列,并且在有新数据可用时不需要新的标识和建模周期。版权所有2001 John Wiley&Sons,Ltd.

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