We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and the assumptions/information set are brought to the forefront. This framework, which we call Optimal Uncertainty Quantification (OUQ), is based on the observation that, given a set of assumptions and information about the problem, there exist optimal bounds on uncertainties: these are obtained as extreme values of well-defined optimization problems corresponding to extremizing probabilities of failure, or of deviations, subject to the constraints imposed by the scenarios compatible with the assumptions and information. In particular, this framework does not implicitly impose inappropriate assumptions, nor does it repudiate relevant inf...
International audienceThis contribution gathers some of the ingredients presented at Erice during th...
In recent years, the optimization, statistics and machine learning communities have built momentum i...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and ...
We have recently proposed a rigorous framework for Uncertainty Quantification (UQ) in which UQ objec...
We present an optimal uncertainty quantification (OUQ) protocol for systems that are characterized b...
Uncertainty quantification in a safety analysis study can be conducted by considering the uncertain ...
In general, many general mathematical formulations of uncertainty quantification problems are NP-har...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence rigorous ce...
In the real world, a significant challenge faced in designing critical systems is the lack of availa...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence r...
We consider constrained optimisation problems with a real-valued, bounded objective function on an a...
How does one evaluate the performance of a stochastic system in the absence of a perfect model (i.e....
This paper defines a logic model of optimization under uncertainty which optimizes the expectation o...
In this work we present the concept of Uncertainty Feature Optimization (UFO), an optimization frame...
International audienceThis contribution gathers some of the ingredients presented at Erice during th...
In recent years, the optimization, statistics and machine learning communities have built momentum i...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and ...
We have recently proposed a rigorous framework for Uncertainty Quantification (UQ) in which UQ objec...
We present an optimal uncertainty quantification (OUQ) protocol for systems that are characterized b...
Uncertainty quantification in a safety analysis study can be conducted by considering the uncertain ...
In general, many general mathematical formulations of uncertainty quantification problems are NP-har...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence rigorous ce...
In the real world, a significant challenge faced in designing critical systems is the lack of availa...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence r...
We consider constrained optimisation problems with a real-valued, bounded objective function on an a...
How does one evaluate the performance of a stochastic system in the absence of a perfect model (i.e....
This paper defines a logic model of optimization under uncertainty which optimizes the expectation o...
In this work we present the concept of Uncertainty Feature Optimization (UFO), an optimization frame...
International audienceThis contribution gathers some of the ingredients presented at Erice during th...
In recent years, the optimization, statistics and machine learning communities have built momentum i...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...