以 ETS 模型为例最小化预测方差

IF 0.4 4区 计算机科学 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Communications Technology and Electronics Pub Date : 2024-09-11 DOI:10.1134/s1064226924700153
N. V. Beletskaya, D. A. Petrusevich
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引用次数: 0

摘要

摘要--本文考虑了如何构建时间序列的组合模型(对于表现出可加性的两个同类模型,如 ARIMA 模型)或模型的组合预测(在不存在可加性的情况下,如 ETS 模型),从而使估计的预测方差最小化。与使用 Student 检验估计预测方差的时间序列替代模型不同,ARIMA 和 ETS 模型允许构建一个与模型参数相关的函数。因此,可以估计预测的置信区间值,并根据组合参数构建具有最小估计区间宽度的模型组合。工作的理论部分研究两个模型预测的线性组合,其中预测方差的估计值最小(无论模型类型如何)。在构建线性组合预测时,可以获得预测方差估算函数的 Hessian。在极值条件(组合模型预测方差估计函数的一阶导数为零)下对其进行分析。然后,估算了几组 ETS 模型的 Hessian,并考虑了模型参数在静止点存在估计预报方差最小值的条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Minimization of Forecast Variance Using an Example of ETS Models

Abstract—Construction of a combined model of time series (for two models of the same type that exhibit additivity, for example, ARIMA) or a combined forecast of models (in the absence of additivity, for example, for ETS models) providing minimization of the estimated forecast variance is considered. As distinct from alternative models of time series in which the forecast variance is estimated using the Student test, the ARIMA and ETS models allow construction of a function that is related to the parameters of model. Thus, it is possible to estimate the value of the confidence interval for the forecast and construct combinations of models with a minimum estimate of the width of the interval depending on the parameters of the combination. The theoretical part of the work studies linear combinations of forecasts of two models, in which the estimate of forecast variance is minimized (regardless of the type of model). The Hessian of the function for estimating the forecast variance is obtained for construction of a linear combination of forecasts. It is analyzed under the conditions for extremum (zero first derivatives of the function for estimating the variance of the forecast for the combined models). Then, the Hessian is estimated for several groups of ETS models, and the conditions for the presence of a minimum of the estimated forecast variance at a stationary point are considered versus parameters of models.

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来源期刊
CiteScore
1.00
自引率
20.00%
发文量
170
审稿时长
10.5 months
期刊介绍: Journal of Communications Technology and Electronics is a journal that publishes articles on a broad spectrum of theoretical, fundamental, and applied issues of radio engineering, communication, and electron physics. It publishes original articles from the leading scientific and research centers. The journal covers all essential branches of electromagnetics, wave propagation theory, signal processing, transmission lines, telecommunications, physics of semiconductors, and physical processes in electron devices, as well as applications in biology, medicine, microelectronics, nanoelectronics, electron and ion emission, etc.
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