Forecasts of product demand are essential for short- and long-term optimization of logistics and production. Thus, the most accurate prediction possible is desirable. In order to optimally train predictive models, the deviation of the forecast compared to the actual demand needs to be assessed by a proper metric. However, if a metric does not represent the actual prediction error, predictive models are insufficiently optimized and, consequently, will yield inaccurate predictions. The most common metrics such as MAPE or RMSE, however, are not suitable for the evaluation of forecasting errors, especially for lumpy and intermittent demand patterns, as they do not sufficiently account for, e.g., temporal shifts (prediction before or after actua...
Intermittent demand appears sporadically, with some time periods showing no demand at all. In this p...
Organizations with large-scale inventory systems typically have a large proportion of items for whic...
AbstractIn this paper we focus on forecasting for intermittent demand data. We propose a new aggrega...
Forecasts of product demand are essential for short- and long-term optimization of logistics and pro...
Forecasting intermittent and lumpy demand is challenging. Demand occurs only sporadically and, when ...
Demand forecasting is a crucial component of demand management. While shortening the forecasting hor...
Intermittent demand items account collectively for considerable proportions of the total stock value...
Intermittent demand items account collectively for considerable proportions of the total stock value...
Demand forecasting plays important role in synchronized planning. Business entity tries to understan...
Effective inventory management requires accurate forecasts for stock-keeping units (SKUs), especiall...
In a service environment, a stockist usually has many slow moving items whose infrequency of demand ...
Purpose: Intermittent demand appears sporadically, with some time periods not even displaying any de...
Inventory management is an important part of a good functioning logistic. Nearly all the literature ...
Slow items with intermittent and lumpy demand patterns can make up a substantial part of an organiza...
International audienceA plethora of parametric and non-parametric methods have been developed in the...
Intermittent demand appears sporadically, with some time periods showing no demand at all. In this p...
Organizations with large-scale inventory systems typically have a large proportion of items for whic...
AbstractIn this paper we focus on forecasting for intermittent demand data. We propose a new aggrega...
Forecasts of product demand are essential for short- and long-term optimization of logistics and pro...
Forecasting intermittent and lumpy demand is challenging. Demand occurs only sporadically and, when ...
Demand forecasting is a crucial component of demand management. While shortening the forecasting hor...
Intermittent demand items account collectively for considerable proportions of the total stock value...
Intermittent demand items account collectively for considerable proportions of the total stock value...
Demand forecasting plays important role in synchronized planning. Business entity tries to understan...
Effective inventory management requires accurate forecasts for stock-keeping units (SKUs), especiall...
In a service environment, a stockist usually has many slow moving items whose infrequency of demand ...
Purpose: Intermittent demand appears sporadically, with some time periods not even displaying any de...
Inventory management is an important part of a good functioning logistic. Nearly all the literature ...
Slow items with intermittent and lumpy demand patterns can make up a substantial part of an organiza...
International audienceA plethora of parametric and non-parametric methods have been developed in the...
Intermittent demand appears sporadically, with some time periods showing no demand at all. In this p...
Organizations with large-scale inventory systems typically have a large proportion of items for whic...
AbstractIn this paper we focus on forecasting for intermittent demand data. We propose a new aggrega...