The central task in many interactive machine learning systems can be formalized as the sequential optimization of a black-box function. Bayesian optimization (BO) is a powerful model-based framework for \emph{adaptive} experimentation, where the primary goal is the optimization of the black-box function via sequentially chosen decisions. In many real-world tasks, it is essential for the decisions to be \emph{robust} against, e.g., adversarial failures and perturbations, dynamic and time-varying phenomena, a mismatch between simulations and reality, etc. Under such requirements, the standard methods and BO algorithms become inadequate. In this dissertation, we consider four research directions with the goal of enhancing robust and adaptive d...
A machine learning system, including when used in reinforcement learning, is usually fed with only l...
Bayesian optimization is a powerful global op-timization technique for expensive black-box functions...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
Optimizing objectives under constraints, where both the objectives and constraints are black box fun...
Bayesian optimization has risen over the last few years as a very attractive approach to find the op...
Bayesian optimization forms a set of powerful tools that allows efficient blackbox optimization and...
plenary presentationInternational audienceBayesian Optimization (BO) is a popular approach to the gl...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Kernel-based bandit is an extensively studied black-box optimization problem, in which the objective...
Bayesian optimisation (BO) is an increasingly popular strategy for optimising functions with substan...
Humans excel at confronting problems with little to no prior information about, and with few interac...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
Bayesian optimization is a powerful technique for the optimization of expensive black-box functions....
A new acquisition function is proposed for solving robust optimization problems via Bayesian Optimiz...
A machine learning system, including when used in reinforcement learning, is usually fed with only l...
Bayesian optimization is a powerful global op-timization technique for expensive black-box functions...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
Optimizing objectives under constraints, where both the objectives and constraints are black box fun...
Bayesian optimization has risen over the last few years as a very attractive approach to find the op...
Bayesian optimization forms a set of powerful tools that allows efficient blackbox optimization and...
plenary presentationInternational audienceBayesian Optimization (BO) is a popular approach to the gl...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Kernel-based bandit is an extensively studied black-box optimization problem, in which the objective...
Bayesian optimisation (BO) is an increasingly popular strategy for optimising functions with substan...
Humans excel at confronting problems with little to no prior information about, and with few interac...
International audienceWe consider the problem of optimizing a real-valued continuous function f, whi...
Bayesian optimization is a powerful technique for the optimization of expensive black-box functions....
A new acquisition function is proposed for solving robust optimization problems via Bayesian Optimiz...
A machine learning system, including when used in reinforcement learning, is usually fed with only l...
Bayesian optimization is a powerful global op-timization technique for expensive black-box functions...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...