A family of measurements of generalisation is proposed for estimators of continuous distributions. In particular, they apply to neural network learning rules associated with continuous neural networks. The optimal estimators (learning rules) in this sense are Bayesian decision methods with information divergence as loss function. The Bayesian framework guarantees internal coherence of such measurements, while the information geometric loss function guarantees invariance. The theoretical solution for the optimal estimator is derived by a variational method. It is applied to the family of Gaussian distributions and the implications are discussed. This is one in a series of technical reports on this topic; it generalises the results of [ZR95a]...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
When learning Bayesian network based classifiers continuous variables are usually handled by discret...
We consider the model-based reinforcement learning framework where we are interested in learning a m...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
The problem of evaluating dierent learning rules and other statistical estimators is analysed. A new...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Neural network learning rules can be viewed as statistical estimators. They should be studied in Bay...
We introduce a method for learning Bayesian networks that handles the discretization of continuous v...
We consider the problem of learning a Bayesian network structure given n examples and the prior prob...
This paper introduces exact learning of Bayesian networks in estimation of distribution algorithms. ...
We provide a decision theoretic approach to the construction of a learning process in the presence o...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
When learning Bayesian network based classifiers continuous variables are usually handled by discret...
We consider the model-based reinforcement learning framework where we are interested in learning a m...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
The problem of evaluating dierent learning rules and other statistical estimators is analysed. A new...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Neural network learning rules can be viewed as statistical estimators. They should be studied in Bay...
We introduce a method for learning Bayesian networks that handles the discretization of continuous v...
We consider the problem of learning a Bayesian network structure given n examples and the prior prob...
This paper introduces exact learning of Bayesian networks in estimation of distribution algorithms. ...
We provide a decision theoretic approach to the construction of a learning process in the presence o...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
When learning Bayesian network based classifiers continuous variables are usually handled by discret...
We consider the model-based reinforcement learning framework where we are interested in learning a m...