Inference in deep neural networks can be computationally expensive, and networks capable of anytime inference are important in scenarios where the amount of compute or input data varies over time. In such networks the inference process can interrupted to provide a result faster, or continued to obtain a more accurate result. We propose Hierarchical Neural Ensembles (HNE), a novel framework to embed an ensemble of multiple networks in a hierarchical tree structure, sharing intermediate layers. In HNE we control the complexity of inference on-the-fly by evaluating more or less models in the ensemble. Our second contribution is a novel hierarchical distillation method to boost the predictions of small ensembles. This approach leverages th...
The estimation of the a posteriori probability p(c k|x) given the state conditional probability dist...
Ensemble Learning is an effective method for improving generalization in machine learning. However, ...
In this paper, a hierarchical neural network with cascading architecture is proposed and its applica...
Inference in deep neural networks can be computationally expensive, and networks capable of anytime ...
Deep neural networks form the basis of state-of-the-art models across a variety of application domai...
Ensembles of neural networks have shown to give better predictive performance and more reliable unce...
Ensembles of neural networks have shown to give better predictive performance and more reliable unce...
The success of deep neural networks (DNNs) is heavily dependent on computational resources. While DN...
Deep Ensembles, as a type of Bayesian Neural Networks, can be used to estimate uncertainty on the pr...
Ensemble methods can deliver surprising performance gains but also bring significantly higher comput...
Ensembles of models often yield improvements in system performance. These ensemble approaches have a...
Progressive intelligence is a formulation of machine learning which trades-off performance requireme...
A persistent worry with computational models of unsupervised learning is that learning will become m...
Transformer requires a fixed number of layers and heads which makes them inflexible to the complexit...
International audienceHierarchical multi-label classification is a challenging task implying the enc...
The estimation of the a posteriori probability p(c k|x) given the state conditional probability dist...
Ensemble Learning is an effective method for improving generalization in machine learning. However, ...
In this paper, a hierarchical neural network with cascading architecture is proposed and its applica...
Inference in deep neural networks can be computationally expensive, and networks capable of anytime ...
Deep neural networks form the basis of state-of-the-art models across a variety of application domai...
Ensembles of neural networks have shown to give better predictive performance and more reliable unce...
Ensembles of neural networks have shown to give better predictive performance and more reliable unce...
The success of deep neural networks (DNNs) is heavily dependent on computational resources. While DN...
Deep Ensembles, as a type of Bayesian Neural Networks, can be used to estimate uncertainty on the pr...
Ensemble methods can deliver surprising performance gains but also bring significantly higher comput...
Ensembles of models often yield improvements in system performance. These ensemble approaches have a...
Progressive intelligence is a formulation of machine learning which trades-off performance requireme...
A persistent worry with computational models of unsupervised learning is that learning will become m...
Transformer requires a fixed number of layers and heads which makes them inflexible to the complexit...
International audienceHierarchical multi-label classification is a challenging task implying the enc...
The estimation of the a posteriori probability p(c k|x) given the state conditional probability dist...
Ensemble Learning is an effective method for improving generalization in machine learning. However, ...
In this paper, a hierarchical neural network with cascading architecture is proposed and its applica...