Ensemble approaches have been shown to enhance classification by combining the outputs from a set of voting classifiers. Diversity in error patterns among base classifiers promotes ensemble performance. Multi-task learning is an important characteristic for Neural Network classifiers. Introducing a secondary output unit that receives different training signals for base networks in an ensemble can effectively promote diversity and improve ensemble performance. Here a Competitive Learning Neural Network Ensemble is proposed where a secondary output unit predicts the classification performance of the primary output unit in each base network. The networks compete with each other on the basis of classification performance and partition the stimu...
This thesis is focused on the analysis and development of Ensembles of Neural Networks. An ensemble ...
Neural networks are generally considered as function approximation models that map a set of input fe...
Part 2: Learning-Ensemble LearningInternational audienceAn ensemble of distributed neural network cl...
Ensemble approaches have been shown to enhance classification by combining the outputs from a set of...
Abstract — In this study we introduce a neural network ensemble composed of several linear perceptro...
In the past decade, more and more research has shown that ensembles of neural networks (sometimes re...
Artificial neural networks(ANNs) are computing models for information processing and pattern identif...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
This chapter presents the state of the art in classifier ensembles and their comparative performance...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
Abstract. Ensemble models can achieve more accurate predictions than single learners. Selective ense...
Neural network ensemble is a learning paradigm where several neural networks are jointly used to sol...
Abstract. We introduce a new method to combine the output probabil-ities of convolutional neural net...
In solving pattern recognition problems, many ensemble methods have been proposed to replace a singl...
This thesis is focused on the analysis and development of Ensembles of Neural Networks. An ensemble ...
Neural networks are generally considered as function approximation models that map a set of input fe...
Part 2: Learning-Ensemble LearningInternational audienceAn ensemble of distributed neural network cl...
Ensemble approaches have been shown to enhance classification by combining the outputs from a set of...
Abstract — In this study we introduce a neural network ensemble composed of several linear perceptro...
In the past decade, more and more research has shown that ensembles of neural networks (sometimes re...
Artificial neural networks(ANNs) are computing models for information processing and pattern identif...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
It is well-known that ensemble performance relies heavily on sufficient diversity among the base cla...
This chapter presents the state of the art in classifier ensembles and their comparative performance...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
Abstract. Ensemble models can achieve more accurate predictions than single learners. Selective ense...
Neural network ensemble is a learning paradigm where several neural networks are jointly used to sol...
Abstract. We introduce a new method to combine the output probabil-ities of convolutional neural net...
In solving pattern recognition problems, many ensemble methods have been proposed to replace a singl...
This thesis is focused on the analysis and development of Ensembles of Neural Networks. An ensemble ...
Neural networks are generally considered as function approximation models that map a set of input fe...
Part 2: Learning-Ensemble LearningInternational audienceAn ensemble of distributed neural network cl...