The paper shows that due to the features of SKU (stock-keeping unit) demand data wellknown error measures previously used to analyse the accuracy of adjustments are generally not advisable for the task. In particular, percentage errors are affected by outliers and biases arising from a large number of low actual demand values and correlation between forecast errors and actual outcomes. It is also shown that MASE is equivalent to the arithmetic average of relative mean absolute errors (MAEs) and inherently is biased towards overrating the benchmark method. Therefore existing measures cannot deliver easily interpretable and unambiguous results. To overcome the imperfections of existing schemes a new measure is introduced which indicates avera...
Empirical research suggests that quantitatively derived forecasts are very frequently judgementally ...
Accurate demand forecasting is the cornerstone of a firm’s operations. The statistical system foreca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Forecast adjustment commonly occurs when organizational forecasters adjust a statistical forecast of...
Judgmental adjustments to statistically generated forecasts have become a standard practice in deman...
Forecasting at the Stock Keeping Unit (SKU) disaggregate level in order to support operations manage...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Successful demand planning relies on accurate demand forecasts. Existing demand planning software ty...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Demand forecasting is a crucial aspect of the planning process in supply-chain companies. The most c...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Prediction of demand is a key component within supply chain management. Im- proved accuracy in forec...
Prediction of demand is a key component within supply chain management. Improved accuracy in forecas...
Whilst the research literature points towards the benefits of a statistical approach, business pract...
Empirical research suggests that quantitatively derived forecasts are very frequently judgementally ...
Accurate demand forecasting is the cornerstone of a firm’s operations. The statistical system foreca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Forecast adjustment commonly occurs when organizational forecasters adjust a statistical forecast of...
Judgmental adjustments to statistically generated forecasts have become a standard practice in deman...
Forecasting at the Stock Keeping Unit (SKU) disaggregate level in order to support operations manage...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Successful demand planning relies on accurate demand forecasts. Existing demand planning software ty...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Demand forecasting is a crucial aspect of the planning process in supply-chain companies. The most c...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Prediction of demand is a key component within supply chain management. Im- proved accuracy in forec...
Prediction of demand is a key component within supply chain management. Improved accuracy in forecas...
Whilst the research literature points towards the benefits of a statistical approach, business pract...
Empirical research suggests that quantitatively derived forecasts are very frequently judgementally ...
Accurate demand forecasting is the cornerstone of a firm’s operations. The statistical system foreca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...