summary:For general Bayes decision rules there are considered perceptron approximations based on sufficient statistics inputs. A particular attention is paid to Bayes discrimination and classification. In the case of exponentially distributed data with known model it is shown that a perceptron with one hidden layer is sufficient and the learning is restricted to synaptic weights of the output neuron. If only the dimension of the exponential model is known, then the number of hidden layers will increase by one and also the synaptic weights of neurons from both hidden layers have to be learned
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
This work considers a class of canonical neural networks comprising rate coding models, wherein neur...
A new training algorithm for neural networks in binary classification problems is presented. It is b...
summary:For general Bayes decision rules there are considered perceptron approximations based on suf...
We describe how to solve linear-non-separable problems using simple feed-forward perceptrons without...
This paper reviews the Bayesian approach to learning in neural networks, then introduces a new adapt...
Bayesian statistics is has been very successful in describing behavioural data on decision making an...
Les réseaux neuronaux (RN) sont des outils efficaces qui atteignent des performances de pointe dans ...
Several recent contributions have suggested to consider neural networks, obtained through supervized...
We propose a modular neural-network structure for imple-menting the Bayesian framework for learning ...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
master thesisartificial intelligenceReal biological networks are able to make decisions. We will sho...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
Abstract. Bayes-N is an algorithm for Bayesian network learning from data based on local measures of...
The Laplace approximation yields a tractable marginal likelihood for Bayesian neural networks. This ...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
This work considers a class of canonical neural networks comprising rate coding models, wherein neur...
A new training algorithm for neural networks in binary classification problems is presented. It is b...
summary:For general Bayes decision rules there are considered perceptron approximations based on suf...
We describe how to solve linear-non-separable problems using simple feed-forward perceptrons without...
This paper reviews the Bayesian approach to learning in neural networks, then introduces a new adapt...
Bayesian statistics is has been very successful in describing behavioural data on decision making an...
Les réseaux neuronaux (RN) sont des outils efficaces qui atteignent des performances de pointe dans ...
Several recent contributions have suggested to consider neural networks, obtained through supervized...
We propose a modular neural-network structure for imple-menting the Bayesian framework for learning ...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
master thesisartificial intelligenceReal biological networks are able to make decisions. We will sho...
Embodied agents, be they animals or robots, acquire information about the world through their senses...
Abstract. Bayes-N is an algorithm for Bayesian network learning from data based on local measures of...
The Laplace approximation yields a tractable marginal likelihood for Bayesian neural networks. This ...
RÉSUMÉ: Les réseaux de neurones profonds sont capables de résoudre de nombreux problèmes d'apprentis...
This work considers a class of canonical neural networks comprising rate coding models, wherein neur...
A new training algorithm for neural networks in binary classification problems is presented. It is b...