Demand forecasting is central to decision making and operations in organisations. As the volume of forecasts increases, for example due to an increased product customisation that leads to more SKUs being traded, or a reduction in the length of the forecasting cycle, there is a pressing need for reliable automated forecasting. Conventionally, companies rely on a statistical baseline forecast that captures only past demand patterns, which is subsequently adjusted by human experts to incorporate additional information such as promotions. Although there is evidence that such process adds value to forecasting, it is questionable how much it can scale up, due to the human element. Instead, in the literature it has been proposed to enhance the bas...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Earlier research on the effects of nonoverlapping temporal aggregation on demand forecasting showed ...
Temporal aggregation is an intuitively appealing approach to deal with demand uncertainty. There are...
Demand forecasting is central to decision making and operations in organisations. As the volume of f...
AbstractDemand forecasting is central to decision making and operations in organisations. As the vol...
Recent advances have demonstrated the benefits of temporal aggregation for demand forecasting, inclu...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Demand forecasting performance is subject to the uncertainty underlying the time series an organizat...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Demand forecasting performance is subject to the uncertainty underlying the time series an organisat...
Most operations decisions are based on some kind of forecast of future demand. Thus, forecasting is ...
Various approaches have been considered in the literature to improve demand forecasting in supply ch...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Earlier research on the effects of nonoverlapping temporal aggregation on demand forecasting showed ...
Temporal aggregation is an intuitively appealing approach to deal with demand uncertainty. There are...
Demand forecasting is central to decision making and operations in organisations. As the volume of f...
AbstractDemand forecasting is central to decision making and operations in organisations. As the vol...
Recent advances have demonstrated the benefits of temporal aggregation for demand forecasting, inclu...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Demand forecasting performance is subject to the uncertainty underlying the time series an organizat...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Demand forecasting performance is subject to the uncertainty underlying the time series an organisat...
Most operations decisions are based on some kind of forecast of future demand. Thus, forecasting is ...
Various approaches have been considered in the literature to improve demand forecasting in supply ch...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Earlier research on the effects of nonoverlapping temporal aggregation on demand forecasting showed ...
Temporal aggregation is an intuitively appealing approach to deal with demand uncertainty. There are...