Bayesian field theory denotes a nonparametric Bayesian approach for learning functions from observational data. Based on the principles of Bayesian statistics, a particular Bayesian field theory is defined by combining two models: a likelihood model, providing a probabilistic description of the measurement process, and a prior model, providing the information necessary to generalize from training to non-training data. The particular likelihood models discussed in the paper are those of general density estimation, Gaussian regression, clustering, classification, and models specific for inverse quantum problems. Besides problem typical hard constraints, like normalization and positivity for probabilities, prior models have to implement all th...
This paper offers examples of concrete numerical applications of Bayesian quantum-state-assignment m...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Non-parametric models and techniques enjoy a growing popularity in the field of machine learning, an...
This new edition offers a comprehensive introduction to the analysis of data using Bayes rule. It ge...
This new edition offers a comprehensive introduction to the analysis of data using Bayes rule. It ge...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Using a new Bayesian method for solving inverse quantum problems, potentialsof quantum systems are r...
These lecture notes highlight the mathematical and computational structure relating to the formulati...
Bayesian nonparametrics are Bayesian models where the underlying finite-dimensional random variable ...
This thesis is devoted to asymptotic analysis and computations of probability measures. We are conce...
Machine learning models are usually trained by a large number of observations (big data) to make pr...
These notes aim at presenting an overview of Bayesian statistics, the underlying concepts and applic...
A new method is presented to reconstruct the potential of a quantum mechanical many-body system from...
The Feynman path integral representation of quantum theory is used in a non–parametric Bayesian appr...
This paper offers examples of concrete numerical applications of Bayesian quantum-state-assignment m...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Non-parametric models and techniques enjoy a growing popularity in the field of machine learning, an...
This new edition offers a comprehensive introduction to the analysis of data using Bayes rule. It ge...
This new edition offers a comprehensive introduction to the analysis of data using Bayes rule. It ge...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Using a new Bayesian method for solving inverse quantum problems, potentialsof quantum systems are r...
These lecture notes highlight the mathematical and computational structure relating to the formulati...
Bayesian nonparametrics are Bayesian models where the underlying finite-dimensional random variable ...
This thesis is devoted to asymptotic analysis and computations of probability measures. We are conce...
Machine learning models are usually trained by a large number of observations (big data) to make pr...
These notes aim at presenting an overview of Bayesian statistics, the underlying concepts and applic...
A new method is presented to reconstruct the potential of a quantum mechanical many-body system from...
The Feynman path integral representation of quantum theory is used in a non–parametric Bayesian appr...
This paper offers examples of concrete numerical applications of Bayesian quantum-state-assignment m...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Non-parametric models and techniques enjoy a growing popularity in the field of machine learning, an...