Forecasting Demand With Support Vector Regression Technique Incorporating Feature Selection in the Presence of Calendar Effect

Author:

Sarhani Malek1,El Afia Abdellatif1

Affiliation:

1. ENSIAS, Mohammed V University, Morocco

Abstract

Reliable prediction of future demand is needed to better manage and optimize supply chains. However, a difficulty of forecasting demand arises due to the fact that heterogeneous factors may affect it. Analyzing such data by using classical time series forecasting methods will fail to capture such dependency of factors. This chapter addresses these problems by examining the use of feature selection in forecasting using support vector regression while eliminating the calendar effect using X13-ARIMA-SEATS. The approach is investigated in three different case studies.

Publisher

IGI Global

Reference19 articles.

1. Application of machine learning techniques for supply chain demand forecasting

2. Carbonneau, R., Vahidov, R., & Laframboise, K. (2009). Forecasting supply chain demand using machine learning algorithms. IGI Global.

3. Chen, D. (2009). An effective supply chain performance prediction method and its application. In IEEE international conference on grey systems and intelligent services (Vol. 315, p. 651 - 654). IEEE.

4. Demand Forecasting of Supply Chain Based on Support Vector Regression Method

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