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首页> 外文期刊>Journal of Industrial Engineering International >A new adaptive exponential smoothing method for non-stationary time series with level shifts
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A new adaptive exponential smoothing method for non-stationary time series with level shifts

机译:具有水平位移的非平稳时间序列的一种新的自适应指数平滑方法

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Simple exponential smoothing (SES) methods are the most commonly used methods in forecasting and time series analysis. However, they are generally insensitive to non-stationary structural events such as level shifts, ramp shifts, and spikes or impulses. Similar to that of outliers in stationary time series, these non-stationary events will lead to increased level of errors in the forecasting process. This paper generalizes the SES method into a new adaptive method called revised simple exponential smoothing (RSES), as an alternative method to recognize non-stationary level shifts in the time series. We show that the new method improves the accuracy of the forecasting process. This is done by controlling the number of observations and the smoothing parameter in an adaptive approach, and in accordance with the laws of statistical control limits and the Bayes rule of conditioning. We use a numerical example to show how the new RSES method outperforms its traditional counterpart, SES.
机译:简单指数平滑(SES)方法是预测和时间序列分析中最常用的方法。但是,它们通常对非平稳的结构事件(例如,水平移动,斜坡移动以及尖峰或脉冲)不敏感。与平稳时间序列中的异常值类似,这些非平稳事件将导致预测过程中的错误级别增加。本文将SES方法概括为一种新的自适应方法,称为修正简单指数平滑(RSES),作为一种识别时间序列中非平稳水平偏移的替代方法。我们表明,该新方法提高了预测过程的准确性。这是通过以自适应方式控制观察次数和平滑参数并根据统计控制限制法则和条件的贝叶斯规则完成的。我们使用一个数值示例来说明新的RSES方法比传统的SES方法具有更好的性能。

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