This is the author accepted manuscript. The foinal version is available from Elsevier via the DOI in this recordForecasting competitions have been a major driver not only of improvements in forecasting methods’ performances, but also of the development of new forecasting approaches. However, despite the tremendous value and impact of these competitions, they do suffer from the limitation that performances are measured only in terms of the forecast accuracy and bias, ignoring utility metrics. Using the monthly industry series of the M3 competition, we empirically explore the inventory performances of various widely used forecasting techniques, including exponential smoothing, ARIMA models, the Theta method, and approaches based on multiple t...
Demand forecasting is a crucial input of any inventory system. The quality of the forecasts should b...
AbstractTo compare the accuracy of different forecasting approaches an error measure is required. Ma...
Demand forecasting has been an area of study among scholars and businessmen ever since the start of ...
Forecasting competitions have been a major drive not only for improving the performance of forecasti...
Abstract. In this research, we consider monthly series from the M4 competition to study the relative...
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...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
Abstract—It is difficult to make predictions, especially about the future and making accurate predic...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
<div><p>Machine Learning (ML) methods have been proposed in the academic literature as alternatives ...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
Inaccurate forecasts can be costly for company operations, in terms of stock-outs and lost sales, or...
Demand forecasting is central to decision making and operations in organisations. As the volume of f...
Demand forecasting is a crucial input of any inventory system. The quality of the forecasts should b...
AbstractTo compare the accuracy of different forecasting approaches an error measure is required. Ma...
Demand forecasting has been an area of study among scholars and businessmen ever since the start of ...
Forecasting competitions have been a major drive not only for improving the performance of forecasti...
Abstract. In this research, we consider monthly series from the M4 competition to study the relative...
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...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
Abstract—It is difficult to make predictions, especially about the future and making accurate predic...
A number of research projects have demonstrated that the efficiency of inventory systems does not re...
<div><p>Machine Learning (ML) methods have been proposed in the academic literature as alternatives ...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
Inaccurate forecasts can be costly for company operations, in terms of stock-outs and lost sales, or...
Demand forecasting is central to decision making and operations in organisations. As the volume of f...
Demand forecasting is a crucial input of any inventory system. The quality of the forecasts should b...
AbstractTo compare the accuracy of different forecasting approaches an error measure is required. Ma...
Demand forecasting has been an area of study among scholars and businessmen ever since the start of ...