日历效应下支持向量回归与X13-ARIMA-SEATS方法的需求预测

Malek Sarhani, A. E. Afia
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引用次数: 14

摘要

为了更好地管理和优化供应链,需要对未来需求进行可靠的预测。预测需求的困难主要是由于异质性因素可能会影响需求。用经典的时间序列预测方法分析这类数据,将无法捕捉到这些因素的依赖性。本文提出了一种结合X13-ARIMA-SEATS和支持向量回归(SVR)方法的两阶段预测方法。第一个的目的是消除日历效应,而第二个的目的是预测消除这种影响后的需求。该方法应用于三个不同的案例研究,并与仅基于SVR的预测方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Demand with Support Vector Regression Technique Combined with X13-ARIMA-SEATS Method in the Presence of Calendar Effect
In order to better manage and optimize supply chain, a reliable prediction of future demand is needed. The difficulty of forecasting demand is due mainly to the fact that heterogeneous factors may affect it. Analyzing such kind of data by using classical time series forecasting methods, will fail to capture such dependency of factors. This paper is released to present a forecasting approach of two stages which combines the recent methods X13-ARIMA-SEATS and Support Vector Regression (SVR). The aim of the first one is to remove the calendar effect, while the purpose of the second one is to forecast the demand after the removal of this effect. This approach is applied to three different case studies and compared to the forecasting method based on SVR alone.
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