Title: Improving forecast accuracy for seasonal products in FMCG industry: integration of SARIMA and regression model
Authors: Deepak Bartwal; Rohit Sindhwani; Omkarprasad S. Vaidya
Addresses: Indian Institute of Management, Lucknow, Prabandh Nagar, IIM Road, Lucknow-226013, India ' Institute of Management Technology, Raj Nagar, Ghaziabad, Uttar Pradesh, 201001, India ' Indian Institute of Management, Lucknow, Prabandh Nagar, IIM Road, Lucknow-226013, India
Abstract: Increasing forecast accuracy of seasonal products is very critical as production, inventory and customer service depends on it. There has been introduction of new models, techniques and use of advance data analytics in forecasting, however, considering the complexity of the several causal variables and demand, it has been very difficult to get the consistent accuracy. This paper proposes integrated SARIMA (for non-seasonal component of demand) and regression (for seasonal component of demand) models for improving the forecasting accuracy. Further, we evaluate the performance of the proposed model with other known methods such as, SARIMA, ANN and SARIMAX. The performance is evaluated on various parameters of forecasting error. It is seen that for the empirical data, the proposed method outranks the other methods on all the performance metrics. Further, this paper brings into managerial insights, which can be replicated to various industries, indicating the wide scope of the proposed approach.
Keywords: forecasting; insecticide; regression; SARIMA; seasonality.
DOI: 10.1504/IJISE.2024.136417
International Journal of Industrial and Systems Engineering, 2024 Vol.46 No.2, pp.259 - 279
Received: 02 Aug 2021
Accepted: 29 May 2022
Published online: 01 Feb 2024 *