Abstract. In this research, we consider monthly series from the M4 competition to study the relative performance of top-down and bottom-up strategies by means of implementing forecast automation of state space and ARIMA models. For the bottomup strategy, the forecast for each series is developed individually and then these are combined to produce a cumulative forecast of the aggregated series. For the top-down strategy, the series or components values are first combined and then a single forecast is determined for the aggregated series. Based on our implementation, state space models showed a higher forecast performance when a top-down strategy is applied. ARIMA models had a higher forecast performance for the bottom-up strategy. For state ...
ARIMA is seldom used in supply chains in practice. There are several reasons, not the least of which...
Demand forecasting performance is subject to the uncertainty underlying the time series an organisat...
Abstract Background Improving financial time series forecasting is one of the most challenging and v...
This is the author accepted manuscript. The foinal version is available from Elsevier via the DOI in...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This paper describes the approach that we implemented for producing the point forecasts and predicti...
Forecasting future sales is one of the most important issues that is beyond all strategic and planni...
Forecasting competitions have been a major drive not only for improving the performance of forecasti...
Like the previous M competitions, M4 competition resulted in great contributions to the field of for...
Abstract In some situations forecasts for a number of sub-aggregations are required for analysis in ...
We investigate the relative effectiveness of top-down versus bottom-up strategies for forecasting th...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Forecasting is one of the important tools in business environment because it assists in decision-mak...
ARIMA is seldom used in supply chains in practice. There are several reasons, not the least of which...
Demand forecasting performance is subject to the uncertainty underlying the time series an organisat...
Abstract Background Improving financial time series forecasting is one of the most challenging and v...
This is the author accepted manuscript. The foinal version is available from Elsevier via the DOI in...
Given a set of past data and one or more hierarchies, hierarchical forecasting aims to predict a cer...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This paper describes the approach that we implemented for producing the point forecasts and predicti...
Forecasting future sales is one of the most important issues that is beyond all strategic and planni...
Forecasting competitions have been a major drive not only for improving the performance of forecasti...
Like the previous M competitions, M4 competition resulted in great contributions to the field of for...
Abstract In some situations forecasts for a number of sub-aggregations are required for analysis in ...
We investigate the relative effectiveness of top-down versus bottom-up strategies for forecasting th...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Forecasting is one of the important tools in business environment because it assists in decision-mak...
ARIMA is seldom used in supply chains in practice. There are several reasons, not the least of which...
Demand forecasting performance is subject to the uncertainty underlying the time series an organisat...
Abstract Background Improving financial time series forecasting is one of the most challenging and v...