In this paper we establish a mathematical framework for a range of inverse problems for functions, given a finite set of noisy observations. The problems are hence underdetermined and are often ill-posed. We study these problems from the viewpoint of Bayesian statistics, with the resulting posterior probability measure being defined on a space of functions. We develop an abstract framework for such problems which facilitates application of an infinite-dimensional version of Bayes theorem, leads to a well-posedness result for the posterior measure (continuity in a suitable probability metric with respect to changes in data), and also leads to a theory for the existence of maximizing the posterior probability (MAP) estimators for such Bayesia...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
Numerical analysis of Bayesian inverse problems for hyperbolic partial differential equations is ana...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
These lecture notes highlight the mathematical and computational structure relating to the formulati...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
Over the last a few decades, a spectrum of methods for the solution of inverse problems has been exa...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
Numerical analysis of Bayesian inverse problems for hyperbolic partial differential equations is ana...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
These lecture notes highlight the mathematical and computational structure relating to the formulati...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
Over the last a few decades, a spectrum of methods for the solution of inverse problems has been exa...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
Numerical analysis of Bayesian inverse problems for hyperbolic partial differential equations is ana...