We consider the problem of providing optimal uncertainty quantification (UQ) – and hence rigorous certification – for partially-observed functions. We present a UQ framework within which the observations may be small or large in number, and need not carry information about the probability distribution of the system in operation. The UQ objectives are posed as optimization problems, the solutions of which are optimal bounds on the quantities of interest; we consider two typical settings, namely parameter sensitivities (McDiarmid diameters) and output deviation (or failure) probabilities. The solutions of these optimization problems depend non-trivially (even non-monotonica...
We consider uncertainty quantification in the context of certification, i.e. showing that the probab...
We propose a formulation of a distributionally robust approach to model certain structural informat...
We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and ...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence r...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence rigorous ce...
We present an optimal uncertainty quantification (OUQ) protocol for systems that are characterized b...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
We study the problem of computing a function f(x1, ..., xn) given that the actual values of the vari...
We consider the problem of minimizing a convex function that depends on an uncertain parameter $\the...
In this work, a strategy is developed to deal with the error affecting the objective functions in un...
The field of uncertainty quantification (UQ) deals with physical systems described by an input-outpu...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We consider uncertainty quantification in the context of certification, i.e. showing that the probab...
We propose a formulation of a distributionally robust approach to model certain structural informat...
We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and ...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence r...
We consider the problem of providing optimal uncertainty quantification (UQ) – and hence rigorous ce...
We present an optimal uncertainty quantification (OUQ) protocol for systems that are characterized b...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
We study the problem of computing a function f(x1, ..., xn) given that the actual values of the vari...
We consider the problem of minimizing a convex function that depends on an uncertain parameter $\the...
In this work, a strategy is developed to deal with the error affecting the objective functions in un...
The field of uncertainty quantification (UQ) deals with physical systems described by an input-outpu...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We consider uncertainty quantification in the context of certification, i.e. showing that the probab...
We propose a formulation of a distributionally robust approach to model certain structural informat...
We propose a rigorous framework for Uncertainty Quantification (UQ) in which the UQ objectives and ...