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Forecasting replenishment orders in retail: value of modelling low and intermittent consumer demand with distributions

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  • Ville Sillanpää
  • Juuso Liesiö

Abstract

In retail, distribution centres can forecast the stores’ future replenishment orders by computing planned orders for each stock-keeping-unit. Planned orders are obtained by simulating the future replenishment ordering of each stock-keeping-unit based on information about the delivery schedules, the inventory levels, the order policies and the point-estimate forecasts of consumer demand. Point-estimate forecasts are commonly used because automated store ordering systems do not provide information on the demand distribution. However, it is not clear how accurate the resulting planned orders are in the case of products with low and intermittent demand, which make up large parts of the assortment in retail. This paper examines the added value of modelling consumer demand with distributions, when computing the planned orders of products with low and intermittent demand. We use real sales data to estimate two versions of a planned order model: One that uses point-estimates and another that uses distributions to model the consumer demand. We compare the forecasting accuracies of the two models and apply them to two example applications. Our results show that using distributions instead of point-estimates results in a significant improvement in the accuracy of replenishment order forecasts and offers potential for substantial cost savings.

Suggested Citation

  • Ville Sillanpää & Juuso Liesiö, 2018. "Forecasting replenishment orders in retail: value of modelling low and intermittent consumer demand with distributions," International Journal of Production Research, Taylor & Francis Journals, vol. 56(12), pages 4168-4185, June.
  • Handle: RePEc:taf:tprsxx:v:56:y:2018:i:12:p:4168-4185
    DOI: 10.1080/00207543.2018.1431413
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