[[abstract]]In the past few decades, there were quite a few learning algorithms developed to extract knowledge from data. However, none of the single algorithms can be applicable to learn all the datasets with favor results because data patterns may represent linear and non-linear. Accordingly, the idea of aggregating the predictions of multiple learning models to improve the forecasting accuracy of a single method was proposed. Nevertheless, how to improve the accuracy of the aggregated predictions when learning small datasets is the objective of this study. Based on the distributions of the predictive errors of learning models, the proposed method learns the weights of the models and then tries to aggregate more precise predictions with t...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
Multiple approaches have been developed for improving predictive performance of a system by creating...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
[[abstract]]In the past few decades, there were quite a few learning algorithms developed to extract...
Making predictions nowadays is of high importance for any company, whether small or large, as thanks...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for di...
Abstract. This paper provides a discussion of the effects of different multi-level learning approach...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
Learning models used for prediction purposes are mostly developed without paying much cognizance to ...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
The predictive clustering approach to rule learning presented in the thesis is based on ideas from t...
We describe a method for eliminating double counting in multi-model ensemble forecasts. The method i...
How should we react to dynamically changing inputs in various areas of computer science? This is one...
In this paper, we investigate the method of stacked generalization in combining models derived from ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
Multiple approaches have been developed for improving predictive performance of a system by creating...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...
[[abstract]]In the past few decades, there were quite a few learning algorithms developed to extract...
Making predictions nowadays is of high importance for any company, whether small or large, as thanks...
The linear combination of forecasts is a procedure that has improved the forecasting accuracy for di...
Abstract. This paper provides a discussion of the effects of different multi-level learning approach...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
Learning models used for prediction purposes are mostly developed without paying much cognizance to ...
Abstract — In this paper we provide experimental results and extensions to our previous theoretical ...
The predictive clustering approach to rule learning presented in the thesis is based on ideas from t...
We describe a method for eliminating double counting in multi-model ensemble forecasts. The method i...
How should we react to dynamically changing inputs in various areas of computer science? This is one...
In this paper, we investigate the method of stacked generalization in combining models derived from ...
A common problem in out-of-sample prediction is that there are potentially many relevant predictors ...
Multiple approaches have been developed for improving predictive performance of a system by creating...
This paper proposes a dynamic ensemble algorithm to combine forecasting results from multiple method...