forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduction techniques aimed at improving the convergence rate, namely (i) common random numbers (CRN), which is relevant for population-based noisy optimization and (ii) stratified sampling, which is relevant for most noisy optimization problems. We present artificial models of noise for which common random numbers are very efficient, and artificial models of noise for which common random numbers are detrimental. We then experiment on a desperately expensive unit commitment problem. As expected, stratified sampling is never detrimental. Nonetheless, in practice, common random numbers provided, by far, most of the improvement
International audienceIn this paper, we propose a novel reinforcement-learning algorithm consisting ...
International audienceIn this paper, we propose a unified view of gradient-based algorithms for stoc...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduct...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
An open problem in optimization with noisy information is the computation of an exact minimizer that...
In this paper we discuss the issue of solving stochastic optimization problems bymeans of sample ave...
International audienceIn this paper, we propose a stratified sampling algorithm in which the random ...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sample approximations o...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
Optimization with noisy gradients has become ubiquitous in statistics and machine learning. Reparame...
We give an overview of the main techniques for im proving the statistical e ciency of simulation est...
We present a new algorithm, truncated variance reduction (TruVaR), that treats Bayesian optimization...
International audienceStochastic optimization algorithms with variance reduction have proven success...
International audienceIn this paper, we propose a novel reinforcement-learning algorithm consisting ...
International audienceIn this paper, we propose a unified view of gradient-based algorithms for stoc...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
forthcomingInternational audienceWe consider noisy optimization and some traditional variance reduct...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
An open problem in optimization with noisy information is the computation of an exact minimizer that...
In this paper we discuss the issue of solving stochastic optimization problems bymeans of sample ave...
International audienceIn this paper, we propose a stratified sampling algorithm in which the random ...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
This paper studies the use of randomized Quasi-Monte Carlo methods (RQMC) in sample approximations o...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
Optimization with noisy gradients has become ubiquitous in statistics and machine learning. Reparame...
We give an overview of the main techniques for im proving the statistical e ciency of simulation est...
We present a new algorithm, truncated variance reduction (TruVaR), that treats Bayesian optimization...
International audienceStochastic optimization algorithms with variance reduction have proven success...
International audienceIn this paper, we propose a novel reinforcement-learning algorithm consisting ...
International audienceIn this paper, we propose a unified view of gradient-based algorithms for stoc...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...