Robust Sales forecasting Using Deep Learning with Static and Dynamic Covariates

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-09-28 DOI:10.3390/asi6050085
Patrícia Ramos, José Manuel Oliveira
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Abstract

Retailers must have accurate sales forecasts to efficiently and effectively operate their businesses and remain competitive in the marketplace. Global forecasting models like RNNs can be a powerful tool for forecasting in retail settings, where multiple time series are often interrelated and influenced by a variety of external factors. By including covariates in a forecasting model, we can often better capture the various factors that can influence sales in a retail setting. This can help improve the accuracy of our forecasts and enable better decision making for inventory management, purchasing, and other operational decisions. In this study, we investigate how the accuracy of global forecasting models is affected by the inclusion of different potential demand covariates. To ensure the significance of the study’s findings, we used the M5 forecasting competition’s openly accessible and well-established dataset. The results obtained from DeepAR models trained on different combinations of features indicate that the inclusion of time-, event-, and ID-related features consistently enhances the forecast accuracy. The optimal performance is attained when all these covariates are employed together, leading to a 1.8% improvement in RMSSE and a 6.5% improvement in MASE compared to the baseline model without features. It is noteworthy that all DeepAR models, both with and without covariates, exhibit a significantly superior forecasting performance in comparison to the seasonal naïve benchmark.
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基于静态和动态协变量的深度学习稳健销售预测
零售商必须有准确的销售预测,以高效和有效地经营他们的业务,并在市场上保持竞争力。像rnn这样的全球预测模型可以成为零售环境预测的强大工具,在零售环境中,多个时间序列通常是相互关联的,并受到各种外部因素的影响。通过在预测模型中包含协变量,我们通常可以更好地捕获影响零售环境中销售的各种因素。这可以帮助提高我们预测的准确性,并为库存管理、采购和其他操作决策提供更好的决策。在本研究中,我们探讨了全球预测模型的准确性如何受到不同潜在需求协变量的影响。为了确保研究结果的重要性,我们使用了M5预测竞赛的公开访问和完善的数据集。从不同特征组合训练的DeepAR模型得到的结果表明,包含时间、事件和id相关特征一致地提高了预测精度。当所有这些协变量一起使用时,可以获得最佳性能,与没有特征的基线模型相比,RMSSE提高1.8%,MASE提高6.5%。值得注意的是,与季节性naïve基准相比,所有DeepAR模型,无论有无协变量,都表现出明显优越的预测性能。
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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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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