Calibration and uncertainty estimation are crucial topics in high-risk environments. We introduce a new diversity regularizer for classification tasks that uses out-of-distribution samples and increases the overall accuracy, calibration and out-of-distribution detection capabilities of ensembles. Following the recent interest in the diversity of ensembles, we systematically evaluate the viability of explicitly regularizing ensemble diversity to improve calibration on in-distribution data as well as under dataset shift. We demonstrate that diversity regularization is highly beneficial in architectures, where weights are partially shared between the individual members and even allows to use fewer ensemble members to reach the same level of ro...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
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...
Accuracy and diversity are considered to be the two deriving factors when it comes to generating an ...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
A weighted accuracy and diversity (WAD) method is presented, a novel measure used to evaluate the qu...
Abstract. Diversity among individual classifiers is recognized to play a key role in ensemble, howev...
The inaccuracy of neural network models on inputs that do not stem from the distribution underlying ...
Abstract. Ensembles of learnt models constitute one of the main current direc-tions in machine learn...
Copyright © 2014 Xiaodong Zeng et al.This is an open access article distributed under the Creative C...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
ensembles Abstract. The diversity of an ensemble can be calculated in a variety of ways. Here a dive...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
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...
Accuracy and diversity are considered to be the two deriving factors when it comes to generating an ...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
A weighted accuracy and diversity (WAD) method is presented, a novel measure used to evaluate the qu...
Abstract. Diversity among individual classifiers is recognized to play a key role in ensemble, howev...
The inaccuracy of neural network models on inputs that do not stem from the distribution underlying ...
Abstract. Ensembles of learnt models constitute one of the main current direc-tions in machine learn...
Copyright © 2014 Xiaodong Zeng et al.This is an open access article distributed under the Creative C...
Abstract — Many real-world applications have problems when learning from imbalanced data sets, such ...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
ensembles Abstract. The diversity of an ensemble can be calculated in a variety of ways. Here a dive...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Abstract. The problem of combining predictors to increase accuracy (often called ensemble learning) ...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
Ensembles depend on diversity for improved performance. Many ensemble training methods, therefore, a...