© 2019 Society for Industrial and Applied Mathematics. Over forty years ago average-case error was proposed in the applied mathematics literature as an alternative criterion with which to assess numerical methods. In contrast to worstcase error, this criterion relies on the construction of a probability measure over candidate numerical tasks, and numerical methods are assessed based on their average performance over those tasks with respect to the measure. This paper goes further and establishes Bayesian probabilistic numerical methods as solutions to certain inverse problems based upon the numerical task within the Bayesian framework. This allows us to establish general conditions under which Bayesian probabilistic numerical methods are we...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
Bayesian probabilistic numerical methods are a set of tools providing posterior distributions on the...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
It is well understood that Bayesian decision theory and average case analysis are essentially identi...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
It is well understood that Bayesian decision theory and average case analysis are essentially identi...
A combination of the concepts subjective – or Bayesian – statistics and scientific computing, the bo...
Numerical methods provide the computational foundation of science, and power automated data analysis...
We deliver a call to arms for probabilistic numerical methods: algorithms for numerical tasks, inclu...
© 2017 Author(s). This paper develops meshless methods for probabilistically describing discretisati...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
Bayesian probabilistic numerical methods are a set of tools providing posterior distributions on the...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
It is well understood that Bayesian decision theory and average case analysis are essentially identi...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
It is well understood that Bayesian decision theory and average case analysis are essentially identi...
A combination of the concepts subjective – or Bayesian – statistics and scientific computing, the bo...
Numerical methods provide the computational foundation of science, and power automated data analysis...
We deliver a call to arms for probabilistic numerical methods: algorithms for numerical tasks, inclu...
© 2017 Author(s). This paper develops meshless methods for probabilistically describing discretisati...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
The increasing complexity of computer models used to solve contemporary inference problems has been ...
Bayesian probabilistic numerical methods are a set of tools providing posterior distributions on the...