In statistics it is necessary to study the relation among many probability distributions. Information geometry elucidates the geometric structure on the space of all distributions. When combined with Bayesian decision theory, it leads to the new concept of "ideal estimates". They uniquely exist in the space of finite measures, and are generally sufficient statistic. The optimal estimate on any model is given by projecting the ideal estimate onto that model. An error decomposition theorem splits the error of an estimate into the sum of statistical error and approximation error. They can be expanded to yield higher order asymptotics. Furthermore, the ideal estimates under certain uniform priors, invariantly defined in information ge...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Information geometry provides the mathematical sciences with a new framework of analysis. It has eme...
Although its specification in economic models with uncertainty is critical to the results obtained,...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
A general mathematical framework is developed for learning algorithms. A learning task belongs to ei...
The problem of evaluating dierent learning rules and other statistical estimators is analysed. A new...
We show how information geometry throws new light on the interplay between goodness-of-fit and estim...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
An information-processing representation of statistical inference is formulated and utilized to deri...
The book provides a comprehensive introduction and a novel mathematical foundation of the field of i...
Bayes theorem (discrete case) is taken as a paradigm of information acquisition. As mentioned by Ait...
For many years, traditional Bayesian (TB) and information theoretic (IT) procedures for learning fro...
This highly acclaimed text, now available in paperback, provides a thorough account of key concepts ...
The dissertation investigates the nature of partial beliefs and norms governing their use. One widel...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Information geometry provides the mathematical sciences with a new framework of analysis. It has eme...
Although its specification in economic models with uncertainty is critical to the results obtained,...
The problem of evaluating different learning rules and other statistical estimators is analysed. A n...
A general mathematical framework is developed for learning algorithms. A learning task belongs to ei...
The problem of evaluating dierent learning rules and other statistical estimators is analysed. A new...
We show how information geometry throws new light on the interplay between goodness-of-fit and estim...
Neural networks are statistical models and learning rules are estimators. In this paper a theory for...
Bayesian analysts use a formal model, Bayes’ theorem to learn from their data in contrast to non-Bay...
An information-processing representation of statistical inference is formulated and utilized to deri...
The book provides a comprehensive introduction and a novel mathematical foundation of the field of i...
Bayes theorem (discrete case) is taken as a paradigm of information acquisition. As mentioned by Ait...
For many years, traditional Bayesian (TB) and information theoretic (IT) procedures for learning fro...
This highly acclaimed text, now available in paperback, provides a thorough account of key concepts ...
The dissertation investigates the nature of partial beliefs and norms governing their use. One widel...
Neural networks can be regarded as statistical models, and can be analysed in a Bayesian framework. ...
Information geometry provides the mathematical sciences with a new framework of analysis. It has eme...
Although its specification in economic models with uncertainty is critical to the results obtained,...