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Demand forecasting with high dimensional data:the case of SKU retail sales forecasting with intra- and inter-category promotional information

机译:高维数据的需求预测:以类别内和类别间促销信息进行SKU零售预测的情况

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摘要

In marketing analytics applications in OR, the modeler often faces the problem of selecting key variables from a large number of possibilities. For example, SKU level retail store sales are affected by inter and intra category effects which potentially need to be considered when deciding on promotional strategy and producing operational forecasts. But no research has yet put this well accepted concept into forecasting practice: an obvious obstacle is the ultra-high dimensionality of the variable space. This paper develops a four steps methodological framework to overcome the problem. It is illustrated by investigating the value of both intra- and inter-category SKU level promotional information in improving forecast accuracy. The method consists of the identification of potentially influential categories, the building of the explanatory variable space, variable selection and model estimation by a multistage LASSO regression, and the use of a rolling scheme to generate forecasts. The success of this new method for dealing with high dimensionality is demonstrated by improvements in forecasting accuracy compared to alternative methods of simplifying the variable space. The empirical results show that models integrating more information perform significantly better than the baseline model when using the proposed methodology framework. In general, we can improve the forecasting accuracy by 12.6 percent over the model using only the SKU's own predictors. But of the improvements achieved, 95 percent of it comes from the intra-category information, and only 5 percent from the inter-category information. The substantive marketing results also have implications for promotional category management.
机译:在OR中的营销分析应用程序中,建模者经常面临从众多可能性中选择关键变量的问题。例如,SKU级零售商店的销售受类别间和类别内影响的影响,在确定促销策略和制定运营预测时可能需要考虑这些影响。但是尚无研究将这个公认的概念用于预测实践:一个明显的障碍是可变空间的超高维数。本文提出了一个四步的方法框架来克服这个问题。通过调查类别内和类别间SKU级别促销信息在提高预测准确性中的价值来说明这一点。该方法包括识别潜在影响的类别,建立解释性变量空间,通过多阶段LASSO回归进行变量选择和模型估计,以及使用滚动方案生成预测。与简化可变空间的替代方法相比,改进了预测精度证明了这种新方法处理高维的成功。实证结果表明,使用建议的方法框架时,集成更多信息的模型的性能明显优于基线模型。通常,仅使用SKU自己的预测器,我们就可以将模型的预测准确性提高12.6%。但是,在获得的改进中,其中95%来自类别内信息,而只有5%来自类别间信息。实质性的营销结果也对促销类别管理产生影响。

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