Various approaches have been considered in the literature to improve demand forecasting in supply chains. Among these approaches, non-overlapping temporal aggregation has been shown to be an effective approach that can improve forecast accuracy. However, the benefit of this approach has been shown only under single exponential smoothing (when it is a non-optimal method) and no theoretical analysis has been conducted to look at the impact of this approach under optimal forecasting. This paper aims to bridge this gap by analysing the impact of temporal aggregation on supply chain demand and orders when optimal forecasting is used. To do so, we consider a two-stage supply chain (e.g. a retailer and a manufacturer) where the retailer faces an a...
Demand forecasts are the basis of most decisions in supply chain management. The granularity of the...
There has been strong empirical evidence that demand variability increases as one moves up the suppl...
Demand forecasting is a fundamental component of efficient supply chain management. An accurate dema...
Various approaches have been considered in the literature to improve demand forecasting in supply ch...
Demand forecasting performance is subject to the uncertainty underlying the time series an organizat...
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...
We examine the impact of three forecasting methods on the bullwhip effect in a two-stage supply chai...
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 ...
Recent advances have demonstrated the benefits of temporal aggregation for demand forecasting, inclu...
This paper studies the impact of different forecasting techniques on the inventory bullwhip effect i...
Demand forecasts are the basis of most decisions in supply chain management. The granularity of thes...
This paper considers a supply chain with the first order autoregressive and the first order moving a...
Supply chains are rarely in their basic, simple form – they involve different participants who respe...
Demand forecasts are the basis of most decisions in supply chain management. The granularity of the...
There has been strong empirical evidence that demand variability increases as one moves up the suppl...
Demand forecasting is a fundamental component of efficient supply chain management. An accurate dema...
Various approaches have been considered in the literature to improve demand forecasting in supply ch...
Demand forecasting performance is subject to the uncertainty underlying the time series an organizat...
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...
We examine the impact of three forecasting methods on the bullwhip effect in a two-stage supply chai...
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 ...
Recent advances have demonstrated the benefits of temporal aggregation for demand forecasting, inclu...
This paper studies the impact of different forecasting techniques on the inventory bullwhip effect i...
Demand forecasts are the basis of most decisions in supply chain management. The granularity of thes...
This paper considers a supply chain with the first order autoregressive and the first order moving a...
Supply chains are rarely in their basic, simple form – they involve different participants who respe...
Demand forecasts are the basis of most decisions in supply chain management. The granularity of the...
There has been strong empirical evidence that demand variability increases as one moves up the suppl...
Demand forecasting is a fundamental component of efficient supply chain management. An accurate dema...