We consider the bound-constrained global optimization of functions with low effective dimensionality, that are constant along an (unknown) linear subspace and only vary over the effective (complement) subspace. We aim to implicitly explore the intrinsic low dimensionality of the constrained landscape using feasible random embeddings, in order to understand and improve the scalability of algorithms for the global optimization of these special-structure problems. A reduced subproblem formulation is investigated that solves the original problem over a random low-dimensional subspace subject to affine constraints, so as to preserve feasibility with respect to the given domain. Under reasonable assumptions, we show that the probability that the ...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of ...
Simultaneous optimistic optimization (SOO) is a recently proposed global optimization method with a ...
We investigate the unconstrained global optimization of functions with low effective dimensionality,...
Though ubiquitous in applications, global optimisation problems are generally the most computational...
We propose a random-subspace algorithmic framework for global optimization of Lipschitz-continuous o...
International audienceThe challenge of taking many variables into account in optimization problems m...
The challenge of taking many variables into account in optimization problems may be overcome under t...
A stochastic algorithm for global optimization subject to simple bounds is described. The method is ...
Global optimization problems occur in many fields i ncluding mathematics, s tatistics, computer sci...
Multi-objective (MO) optimization problems require simultaneously optimizing two or more objective f...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
A stochastic method for bound constrained global optimization is described. The method can be appli...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
In rigorous constrained global optimization, upper bounds on the objective function help to reduce t...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of ...
Simultaneous optimistic optimization (SOO) is a recently proposed global optimization method with a ...
We investigate the unconstrained global optimization of functions with low effective dimensionality,...
Though ubiquitous in applications, global optimisation problems are generally the most computational...
We propose a random-subspace algorithmic framework for global optimization of Lipschitz-continuous o...
International audienceThe challenge of taking many variables into account in optimization problems m...
The challenge of taking many variables into account in optimization problems may be overcome under t...
A stochastic algorithm for global optimization subject to simple bounds is described. The method is ...
Global optimization problems occur in many fields i ncluding mathematics, s tatistics, computer sci...
Multi-objective (MO) optimization problems require simultaneously optimizing two or more objective f...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
A stochastic method for bound constrained global optimization is described. The method can be appli...
The aim of this paper is to show that the new continuously differentiable exact penalty functions re...
In rigorous constrained global optimization, upper bounds on the objective function help to reduce t...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of ...
Simultaneous optimistic optimization (SOO) is a recently proposed global optimization method with a ...