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Optimization of Seasonal ARIMA Models Using Differential Evolution - Simulated Annealing (DESA) Algorithm in Forecasting Dengue Cases in Baguio City

机译:差流演化 - 模拟退火(DESA)算法在甘蔗市预测登革索案件中的季节性ARIMA模型的优化

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Accurate forecasting of dengue cases would significantly improve epidemic prevention and control capabilities. This paper attempts to provide useful models in forecasting dengue epidemic specific to the young and adult population of Baguio City. To capture the seasonal variations in dengue incidence, this paper develops a robust modeling approach to identify and estimate seasonal autoregressive integrated moving average (SARIMA) models in the presence of additive outliers. Since the least squares estimators are not robust in the presence of outliers, we suggest a robust estimation based on winsorized and reweighted least squares estimators. A hybrid algorithm, Differential Evolution - Simulated Annealing (DESA), is used to identify and estimate the parameters of the optimal SARIMA model. The method is applied to the monthly reported dengue cases in Baguio City, Philippines.
机译:准确的登革热病例预测将显着提高防疫防治能力。本文试图提供有用的模型,以便预测登革热疫情对碧瑶市年轻和成年人群体。为了捕捉登革热入射的季节变化,本文开发了一种稳健的建模方法,可以在添加到异常值存在下识别和估算季节性自回归综合移动平均(Sarima)模型。由于最小二乘估计器在异常值存在下不稳定,因此我们建议基于WinSolized和重新重量最小二乘估计的稳健估计。混合算法,差分演化 - 模拟 - 模拟退火(DESA)用于识别和估计最佳Sarima模型的参数。该方法适用于菲律宾碧瑶市的月度报告的登革热病例。

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