计算机科学
需求预测
质量(理念)
预测分析
分析
供应链
销售预测
供应链管理
运筹学
人工智能
计量经济学
机器学习
数据挖掘
营销
业务
经济
哲学
认识论
工程类
作者
Taha Falatouri,Farzaneh Darbanian,Patrick Brandtner,Chibuzor Udokwu
标识
DOI:10.1016/j.procs.2022.01.298
摘要
The application of predictive analytics (PA) in Supply Chain Management (SCM) has received growing attention over the last years, especially in demand forecasting. The purpose of this paper is to provide an overview of approaches in retail SCM and compare the quality of two selected methods. The data used comprises more than 37 months of actual retail sales data from an Austrian retailer. Based on this data, SARIMA and LSTM models were trained and evaluated. Both models produced reasonable to good results. In general, LSTM performed better for products with stable demand, while SARIMA showed better results for products with seasonal behavior. In addition, we compared results with SARIMAX by adding the external factor of promotions and found that SARIMAX performed significantly better for products with promotions. To further improve forecasting quality on the store level, we suggest hybrid approaches by training SARIMA(X) and LSTM on similar, pre-clustered store groups.
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