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Forecast UPC-level FMCG demand, Part I: Exploratory analysis and visualization

机译:预测UPC级FMCG需求,第一部分:探索性分析和可视化

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We are interested in forecasting a large collection of FMCG demand time series. As the demand of FMCG exists in a hierarchy (from manufacturers to distributors to retailers), the bottom level of the hierarchy may contain thousands or even millions of time series. Producing aggregate consistent forecasts while utilizing the unique features from each time series thus become a technical challenge. To achieve better forecasting results, exploratory analysis is often necessary to obtain insights on the underlying demand generating mechanism for each time series. Exploratory analysis aims at discovering those so-called "exogenous factors", such as price, demand of the complementary/substitutive goods and calendar events, which can help explain some of the demand fluctuation. During forecast accuracy evaluation, outlier detection is also important; a single anomalous time series can contribute much to the overall error. However, in a big data (such as retailing scanner data) enabled environment, exploratory analysis and visualization need much attention, because of the non-scalable nature of the existing methods. Scalability is essential for exogenous factor selection and outlier detection in big time series data. In Part I of this two-part paper, we introduce some exploratory analytics and visualization methods (from not scalable to very scalable) for big retailing time series. Forecasting of the hierarchical FMCG demand is addressed in Part II.
机译:我们有兴趣预测大量的FMCG需求时间序列。随着FMCG的需求存在于层次结构中(从制造商到零售商的经销商),层次结构的底部水平可能包含数千个甚至数百万的时间序列。在利用每个时间序列的不同特征产生的同时产生总一致预测成为技术挑战。为了实现更好的预测结果,往往是必要的探索性分析,以获得对每次序列的潜在需求产生机制的见解。探索性分析旨在发现那些所谓的“外源性因素”,例如价格,补充/替代商品和日历事件的需求,可以帮助解释一些需求波动。在预测准确性评估期间,异常检测也很重要;单个异常时间序列可以为整体错误做出很大贡献。但是,在启用环境的大数据(例如零售扫描仪数据)中,由于现有方法的不可扩展性质,探索性分析和可视化需要很多关注。可扩展性对于大型时间序列数据中的外源因子选择和异常检测至关重要。在这篇两部分纸的第一部分中,我们为大型零售时间序列引入了一些探索性分析和可视化方法(从不可扩展到非常可扩展)。第II部分解决了等级FMCG需求的预测。

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