Ensembles depend on diversity for improved performance. Many ensemble training methods, therefore, attempt to optimize for diversity, which they almost always define in terms of differences in training set predictions. In this paper, however, we demonstrate the diversity of predictions on the training set does not necessarily imply diversity under mild covariate shift, which can harm generalization in practical settings. To address this issue, we introduce a new diversity metric and associated method of training ensembles of models that extrapolate differently on local patches of the data manifold. Across a variety of synthetic and real-world tasks, we find that our method improves generalization and diversity in qualitatively novel ways, e...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
When performing predictive data mining, the use of ensembles is known to increase prediction accurac...
Calibration and uncertainty estimation are crucial topics in high-risk environments. We introduce a ...
Ensembles depend on diversity for improved performance. Many ensemble training methods, therefore, a...
Ensembles of learnt models constitute one of the main current directions in machine learning and dat...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Although deep learning models have achieved state-of-the art performance on a number of vision tasks...
Ensembles are a widely used and effective technique in machine learning—their success is commonly at...
The goal of an ensemble construction with several classifiers is to achieve better generalization t...
This is the author accepted manuscript. The final version is available from Springer Verlag via the ...
A popular technique for modelling data is to construct an ensemble of learners and combine them in t...
Abstract. Ensembles of learnt models constitute one of the main current direc-tions in machine learn...
The performance of an ensemble can be affected by several factors and diversity amongst its member m...
Ensemble methods are widely applied to supervised learning tasks. Based on a simple strategy they of...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
When performing predictive data mining, the use of ensembles is known to increase prediction accurac...
Calibration and uncertainty estimation are crucial topics in high-risk environments. We introduce a ...
Ensembles depend on diversity for improved performance. Many ensemble training methods, therefore, a...
Ensembles of learnt models constitute one of the main current directions in machine learning and dat...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Although deep learning models have achieved state-of-the art performance on a number of vision tasks...
Ensembles are a widely used and effective technique in machine learning—their success is commonly at...
The goal of an ensemble construction with several classifiers is to achieve better generalization t...
This is the author accepted manuscript. The final version is available from Springer Verlag via the ...
A popular technique for modelling data is to construct an ensemble of learners and combine them in t...
Abstract. Ensembles of learnt models constitute one of the main current direc-tions in machine learn...
The performance of an ensemble can be affected by several factors and diversity amongst its member m...
Ensemble methods are widely applied to supervised learning tasks. Based on a simple strategy they of...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
When performing predictive data mining, the use of ensembles is known to increase prediction accurac...
Calibration and uncertainty estimation are crucial topics in high-risk environments. We introduce a ...