The problem of evaluating dierent learning rules and other statistical estimators is analysed. A new general theory of statistical inference is developed by combining Bayesian decision theory with information geometry. It is coherent and invariant. For each sample a unique ideal estimate exists and is given by an average over the posterior. An optimal estimate within a model is given by a projection of the ideal estimate. The ideal estimate is a sucient statistic of the posterior, so practical learning rules are functions of the ideal estimator. If the sole purpose of learning is to extract information from the data, the learning rule must also approximate the ideal estimator. This framework is applicable to both Bayesian and non-Bayesian m...
In statistics it is necessary to study the relation among many probability distributions. Informatio...
<p>Point estimation algorithms learn the expected reward or value, while Bayesian algorithms learn a...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
A general mathematical framework is developed for learning algorithms. A learning task belongs to ei...
Several recent contributions have suggested to consider neural networks, obtained through supervized...
Neural network learning rules can be viewed as statistical estimators. They should be studied in Bay...
We propose a modular neural-network structure for imple-menting the Bayesian framework for learning ...
For many years, traditional Bayesian (TB) and information theoretic (IT) procedures for learning fro...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
In statistics it is necessary to study the relation among many probability distributions. Informatio...
<p>Point estimation algorithms learn the expected reward or value, while Bayesian algorithms learn a...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
A general mathematical framework is developed for learning algorithms. A learning task belongs to ei...
Several recent contributions have suggested to consider neural networks, obtained through supervized...
Neural network learning rules can be viewed as statistical estimators. They should be studied in Bay...
We propose a modular neural-network structure for imple-menting the Bayesian framework for learning ...
For many years, traditional Bayesian (TB) and information theoretic (IT) procedures for learning fro...
Summary The application of the Bayesian learning paradigm to neural networks results in a flexi-ble ...
In statistics it is necessary to study the relation among many probability distributions. Informatio...
<p>Point estimation algorithms learn the expected reward or value, while Bayesian algorithms learn a...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...