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Forecast UPC-level FMCG demand, Part II: Hierarchical reconciliation

机译:预测UPC级别的快速消费品需求,第二部分:层次对帐

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In a big data enabled environment, manufacturers and distributors may have access to previously unobserved retailer-level demand related information. This additional information can be considered in demand forecasting to produce more accurate forecasts, and thus enable better stock-outs management. In Part II of this two-part paper, we explore the hierarchical nature of fast moving consumer goods (FMCG) demand (represented by sales) time series and produce one week ahead rolling forecasts on universal product code (UPC) level (or distributor level, as per our definition below). We show that the hierarchical forecasting framework has significant accuracy improvement over the conventional univariate forecasting methods. The main reason of the observed improvements is due to the price and promotion information available at the retailer level, which is assumed to be unknown to the distributor. To reconcile forecasts according to the hierarchy, only the forecast values at retailer level are needed, the business strategies of individual retailers remain proprietary. A freely available dataset is considered to encourage further exploration. Data exploratory analysis and visualization tools are discussed in Part I of the paper.
机译:在启用大数据的环境中,制造商和分销商可以访问以前未观察到的零售商级别的需求相关信息。可以在需求预测中考虑此附加信息,以产生更准确的预测,从而实现更好的缺货管理。在这个由两部分组成的论文的第二部分中,我们探讨了快速消费品(FMCG)需求(以销售额表示)的时间序列的层次结构,并针对通用产品代码(UPC)级别(或分销商级别)提前一周做出了滚动预测,按照下面的定义)。我们表明,与传统的单变量预测方法相比,分层预测框架具有显着的准确性提高。观察到的改进的主要原因是由于在零售商一级可获得的价格和促销信息,这对于分销商而言是未知的。要根据层次结构协调预测,仅需要零售商级别的预测值,各个零售商的业务策略仍为专有。可以考虑使用免费的数据集来鼓励进一步的探索。数据探索分析和可视化工具在本文的第一部分中进行了讨论。

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