Ensemble methods can deliver surprising performance gains but also bring significantly higher computational costs, e.g., can be up to 2048X in large-scale ensemble tasks. However, we found that the majority of computations in ensemble methods are redundant. For instance, over 77% of samples in CIFAR-100 dataset can be correctly classified with only a single ResNet-18 model, which indicates that only around 23% of the samples need an ensemble of extra models. To this end, we propose an inference efficient ensemble learning method, to simultaneously optimize for effectiveness and efficiency in ensemble learning. More specifically, we regard ensemble of models as a sequential inference process and learn the optimal halting event for inference ...
Ensemble is a machine learning paradigm where multiple learners are trained to solve the same proble...
Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstrated impr...
A growing body of research in continual learning focuses on the catastrophic forgetting problem. Whi...
We investigate four previously unexplored aspects of ensemble selection, a procedure for building e...
Ensemble Learning is an effective method for improving generalization in machine learning. However, ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
We present a new ensemble learning algorithm, DeepBoost, which can use as base classifiers a hypothe...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
International audienceAutomated Machine Learning with ensembling (or AutoML with ensembling) seeks t...
International audienceAutomated Machine Learning with ensembling (or AutoML with ensembling) seeks t...
Ensemble machine learning methods are often used when the true prediction function is not easily app...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
It is common wisdom that gathering a variety of views and inputs improves the process of decision ma...
Ensembles improve prediction performance and allow uncertainty quantification by aggregating predict...
Ensemble is a machine learning paradigm where multiple learners are trained to solve the same proble...
Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstrated impr...
A growing body of research in continual learning focuses on the catastrophic forgetting problem. Whi...
We investigate four previously unexplored aspects of ensemble selection, a procedure for building e...
Ensemble Learning is an effective method for improving generalization in machine learning. However, ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
We present a new ensemble learning algorithm, DeepBoost, which can use as base classifiers a hypothe...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
Ensemble classifiers are created by combining multiple single classifiers to achieve higher classifi...
International audienceAutomated Machine Learning with ensembling (or AutoML with ensembling) seeks t...
International audienceAutomated Machine Learning with ensembling (or AutoML with ensembling) seeks t...
Ensemble machine learning methods are often used when the true prediction function is not easily app...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
It is common wisdom that gathering a variety of views and inputs improves the process of decision ma...
Ensembles improve prediction performance and allow uncertainty quantification by aggregating predict...
Ensemble is a machine learning paradigm where multiple learners are trained to solve the same proble...
Ensemble learning strategies, especially Boosting and Bagging decision trees, have demonstrated impr...
A growing body of research in continual learning focuses on the catastrophic forgetting problem. Whi...