We present an information-theoretic framework for solving global black-box optimization problems that also have black-box constraints. Of particular interest to us is to efficiently solve problems with $\textit{decoupled}$ constraints, in which subsets of the objective and constraint functions may be evaluated independently. For example, when the objective is evaluated on a CPU and the constraints are evaluated independently on a GPU. These problems require an acquisition function that can be separated into the contributions of the individual function evaluations. We develop one such acquisition function and call it Predictive Entropy Search with Constraints (PESC). PESC is an approximation to the expected information gain criterion and it ...
International audienceWe consider the problem of chance constrained optimization where the objective...
Contemporary global optimization algorithms are based on local measures of utility, rather than a pr...
Bayesian optimization is a powerful global optimization technique for expensive black-box functions....
We present an information-theoretic framework for solving global black-box optimization problems tha...
Unknown constraints arise in many types of expensive black-box optimization problems. Several method...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Unknown constraints arise in many types of ex-pensive black-box optimization problems. Sev-eral meth...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
Recent work on Bayesian optimization has shown its effectiveness in global optimization of difficult...
Recent work on Bayesian optimization has shown its effectiveness in global optimization of difficult...
Many real-world problems can be phrased as a multi-objective optimization problem, where the goal is...
Optimizing objectives under constraints, where both the objectives and constraints are black box fun...
We develop parallel predictive entropy search (PPES), a novel algorithm for Bayesian optimization of...
We consider the problem of robust optimization within the well-established Bayesian Optimization (BO...
International audienceWe consider the problem of chance constrained optimization where the objective...
Contemporary global optimization algorithms are based on local measures of utility, rather than a pr...
Bayesian optimization is a powerful global optimization technique for expensive black-box functions....
We present an information-theoretic framework for solving global black-box optimization problems tha...
Unknown constraints arise in many types of expensive black-box optimization problems. Several method...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Unknown constraints arise in many types of ex-pensive black-box optimization problems. Sev-eral meth...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
Recent work on Bayesian optimization has shown its effectiveness in global optimization of difficult...
Recent work on Bayesian optimization has shown its effectiveness in global optimization of difficult...
Many real-world problems can be phrased as a multi-objective optimization problem, where the goal is...
Optimizing objectives under constraints, where both the objectives and constraints are black box fun...
We develop parallel predictive entropy search (PPES), a novel algorithm for Bayesian optimization of...
We consider the problem of robust optimization within the well-established Bayesian Optimization (BO...
International audienceWe consider the problem of chance constrained optimization where the objective...
Contemporary global optimization algorithms are based on local measures of utility, rather than a pr...
Bayesian optimization is a powerful global optimization technique for expensive black-box functions....