This paper provides a description and experimental comparison of different forecast combination techniques for the application of Revenue Management forecasting for Airlines. In order to benefit from the advantages of forecasts predicting seasonal demand using different forecast models on different aggregation levels and to reduce the risks of high noise terms on low level predictions and overgeneralization on higher levels, various approaches based on combination of many predictions are presented and experimentally compared. We propose to evolve combination structures dynamically using Evolutionary Computing approaches. The evolved structures are not only able to generate predictions representing well balanced and stable fusions of m...
It is widely accepted in forecasting that a combination model can improve forecasting accuracy. One ...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
The combination of forecasts is a well established procedure for improving forecast performance and...
The domain of multi level forecast combination is a challenging new domain containing a large potent...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
Predicting a variable for a future point in time helps planning for unknown future situations and i...
In this paper we provide experimental results and extensions to our previous theoretical findings c...
Effective and efficient planning in various areas can be significantly supported by forecasting a va...
Time series forecasting has a long track record in many application areas. In forecasting research, ...
Time series forecasting has a long track record in many application areas. In forecasting research, ...
Abstract. This paper provides a discussion of the effects of different multi-level learning approach...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
Forecast combinations have flourished remarkably in the forecasting community and, in recent years, ...
Adaptivity is a very important feature for industrial forecast systems. In the airline industry, a r...
It is widely accepted in forecasting that a combination model can improve forecasting accuracy. One ...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
The combination of forecasts is a well established procedure for improving forecast performance and...
The domain of multi level forecast combination is a challenging new domain containing a large potent...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
Predicting a variable for a future point in time helps planning for unknown future situations and i...
In this paper we provide experimental results and extensions to our previous theoretical findings c...
Effective and efficient planning in various areas can be significantly supported by forecasting a va...
Time series forecasting has a long track record in many application areas. In forecasting research, ...
Time series forecasting has a long track record in many application areas. In forecasting research, ...
Abstract. This paper provides a discussion of the effects of different multi-level learning approach...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
Forecast combinations have flourished remarkably in the forecasting community and, in recent years, ...
Adaptivity is a very important feature for industrial forecast systems. In the airline industry, a r...
It is widely accepted in forecasting that a combination model can improve forecasting accuracy. One ...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...