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SKU demand forecasting in the presence of promotions

机译:有促销活动时的SKU需求预测

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摘要

Promotions and shorter life cycles make grocery sales forecasting more difficult, requiring more complicated models. We identify methods of increasing complexity and data preparation cost yielding increasing improvements in forecasting accuracy, by varying the forecasting technique, the input features and model scope on an extensive SKU-store level sales and promotion time series from a European grocery retailer. At the high end of data and technique complexity, we propose using regression trees with explicit features constructed from sales and promotion time series of the focal and related SKU-store combinations. We observe that data pooling almost always improves model performance. The results indicate that simple time series techniques perform very well for periods without promotions. However, for periods with promotions, regression trees with explicit features improve accuracy substantially. More sophisticated input is only beneficial when advanced techniques are used. We believe that our approach and findings shed light into certain questions that arise while building a grocery sales forecasting system.
机译:促销活动和较短的生命周期使食品杂货销售的预测更加困难,需要更复杂的模型。我们确定了增加复杂性和数据准备成本的方法,这些方法通过改变预测技术,输入功能和模型范围(来自欧洲杂货零售商的广泛SKU商店级别的销售和促销时间序列)来提高预测准确性。在数据和技术复杂性较高的方面,我们建议使用具有明确特征的回归树,这些特征由重点和相关SKU商店组合的销售和促销时间序列构成。我们观察到数据池几乎总是可以提高模型性能。结果表明,简单的时间序列技术在没有晋升的期间表现良好。但是,对于促销期间,具有显式特征的回归树会大大提高准确性。仅当使用高级技术时,更复杂的输入才有用。我们相信,我们的方法和发现可以揭示在构建杂货销售预测系统时出现的某些问题。

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  • 来源
    《Expert systems with applications》 |2009年第10期|12340-12348|共9页
  • 作者单位

    Koc University, College of Administrative Sciences and Economics, Rumeli Feneri Yolu, Sariyer 34450, Istanbul, Turkey;

    Koc University, College of Administrative Sciences and Economics, Rumeli Feneri Yolu, Sariyer 34450, Istanbul, Turkey;

    Technische Universiteit Eindhoven, School of Industrial Engineering, P.O. Box 513, NL-5600 MB Eindhoven, The Netherlands;

    Technische Universiteit Eindhoven, School of Industrial Engineering, P.O. Box 513, NL-5600 MB Eindhoven, The Netherlands;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    demand forecasting; time series; machine learning; pooling; domain knowledge; promotions;

    机译:需求预测;时间序列;机器学习池领域知识;促销活动;

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