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Bootstrapped Holt Method with Autoregressive Coefficients Based on Harmony Search Algorithm

机译:具有基于和声搜索算法的自回归系数的自动启动HOLT方法

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Exponential smoothing methods are one of the classical time series forecasting methods. It is well known that exponential smoothing methods are powerful forecasting methods. In these methods, exponential smoothing parameters are fixed on time, and they should be estimated with efficient optimization algorithms. According to the time series component, a suitable exponential smoothing method should be preferred. The Holt method can produce successful forecasting results for time series that have a trend. In this study, the Holt method is modified by using time-varying smoothing parameters instead of fixed on time. Smoothing parameters are obtained for each observation from first-order autoregressive models. The parameters of the autoregressive models are estimated by using a harmony search algorithm, and the forecasts are obtained with a subsampling bootstrap approach. The main contribution of the paper is to consider the time-varying smoothing parameters with autoregressive equations and use the bootstrap method in an exponential smoothing method. The real-world time series are used to show the forecasting performance of the proposed method.
机译:指数平滑方法是古典时间序列预测方法之一。众所周知,指数平滑方法是强大的预测方法。在这些方法中,指数平滑参数是按时固定的,并且应估计有效的优化算法。根据时间序列分量,应该优选合适的指数平滑方法。 HOLT方法可以为具有趋势的时间序列产生成功的预测结果。在该研究中,通过使用时变平滑参数而不是固定的时间来修改HOLT方法。从一阶自回归模型中获得平滑参数。通过使用和声搜索算法估计自回归模型的参数,并以带有子采样引导方法获得预测。本文的主要贡献是考虑具有自回归方程的时变平滑参数,并在指数平滑方法中使用引导方法。实际时间序列用于显示所提出的方法的预测性能。

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