We propose a random-subspace algorithmic framework for global optimization of Lipschitz-continuous objectives, and analyse its convergence using novel tools from conic integral geometry. X-REGO randomly projects, in a sequential or simultaneous manner, the high-dimensional original problem into low-dimensional subproblems that can then be solved with any global, or even local, optimization solver. We estimate the probability that the randomly-embedded subproblem shares (approximately) the same global optimum as the original problem. This success probability is then used to show almost sure convergence of X-REGO to an approximate global solution of the original problem, under weak assumptions on the problem (having a strictly feasible global...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
AbstractA family of deterministic algorithms is introduced, designed to solve the global optimisatio...
Random embedding has been applied with empirical success to large-scale black-box optimization probl...
Though ubiquitous in applications, global optimisation problems are generally the most computational...
We investigate the unconstrained global optimization of functions with low effective dimensionality,...
We consider the bound-constrained global optimization of functions with low effective dimensionality...
International audienceThe challenge of taking many variables into account in optimization problems m...
Many problems in economy may be formulated as global optimization problems. Most numerically promisi...
This paper is devoted to the study of partition-based deterministic algorithms for global optimizati...
The challenge of taking many variables into account in optimization problems may be overcome under t...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
This work addresses the sequential optimization of an unknown and potentially nonconvex function ove...
Global optimization problems occur in many fields i ncluding mathematics, s tatistics, computer sci...
With the advent of massive datasets, statistical learning and information processing techniques are ...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
AbstractA family of deterministic algorithms is introduced, designed to solve the global optimisatio...
Random embedding has been applied with empirical success to large-scale black-box optimization probl...
Though ubiquitous in applications, global optimisation problems are generally the most computational...
We investigate the unconstrained global optimization of functions with low effective dimensionality,...
We consider the bound-constrained global optimization of functions with low effective dimensionality...
International audienceThe challenge of taking many variables into account in optimization problems m...
Many problems in economy may be formulated as global optimization problems. Most numerically promisi...
This paper is devoted to the study of partition-based deterministic algorithms for global optimizati...
The challenge of taking many variables into account in optimization problems may be overcome under t...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
This work addresses the sequential optimization of an unknown and potentially nonconvex function ove...
Global optimization problems occur in many fields i ncluding mathematics, s tatistics, computer sci...
With the advent of massive datasets, statistical learning and information processing techniques are ...
AbstractRationalization processes are proposed to improve uniformity in small samples for pseudorand...
AbstractA family of deterministic algorithms is introduced, designed to solve the global optimisatio...
Random embedding has been applied with empirical success to large-scale black-box optimization probl...