Abstract. This paper provides a discussion of the effects of different multi-level learning approaches on the resulting out of sample forecast errors in the case of difficult real-world forecasting problems with large noise terms in the training data, frequently occurring structural breaks and quickly changing environments. In order to benefit from the advantages of learning on different aggregation levels and to reduce the risks of high noise terms on low level predictions and overgeneralization on higher levels, various approaches of using information at different levels are analysed in relation to their effects on the bias, variance and Bayes error components proposed by James and Hastie. We provide an extension of this decomposition for...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
Combining forecasts To improve forecasting accuracy, combine forecasts derived from methods that dif...
The multimodel superensemble (SE) technique has been used with considerable success to improve meteo...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
The domain of multi level forecast combination is a challenging new domain containing a large potent...
[[abstract]]In the past few decades, there were quite a few learning algorithms developed to extract...
Motivated by a real forecasting problem we investigate the issue of when to start forecasting. We s...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper provides a description and experimental comparison of different forecast combination tech...
In this paper we provide experimental results and extensions to our previous theoretical findings c...
Combining forecasts have been proven as one of the most successful methods to improve predictive per...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
Existing approaches to combining multiple forecasts generally offer either theoretical richness or e...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
Combining forecasts To improve forecasting accuracy, combine forecasts derived from methods that dif...
The multimodel superensemble (SE) technique has been used with considerable success to improve meteo...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
The domain of multi level forecast combination is a challenging new domain containing a large potent...
[[abstract]]In the past few decades, there were quite a few learning algorithms developed to extract...
Motivated by a real forecasting problem we investigate the issue of when to start forecasting. We s...
Numerous forecast combination techniques have been proposed. However, these do not systematically ou...
This paper provides a description and experimental comparison of different forecast combination tech...
In this paper we provide experimental results and extensions to our previous theoretical findings c...
Combining forecasts have been proven as one of the most successful methods to improve predictive per...
This paper proposes a framework for the analysis of the theoretical properties of forecast combinati...
This thesis evaluates four of the most popular methods for combining time series forecasts. One aspe...
Combining forecasts is an established approach for improving forecast accuracy. So-called optimal we...
Existing approaches to combining multiple forecasts generally offer either theoretical richness or e...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
Combining forecasts To improve forecasting accuracy, combine forecasts derived from methods that dif...
The multimodel superensemble (SE) technique has been used with considerable success to improve meteo...