International audienceNoisy optimization is the optimization of objective functions corrupted by noise. A portfolio of solvers is a set of solvers equipped with an algorithm selection tool for distributing the computational power among them. Portfolios are widely and successfully used in combinatorial optimization. In this work, we study portfolios of noisy optimization solvers. We obtain mathematically proved performance (in the sense that the portfolio performs nearly as well as the best of its solvers) by an ad hoc portfolio algorithm dedicated to noisy optimization. A somehow surprising result is that it is better to compare solvers with some lag, i.e., propose the current recommendation of best solver based on their performance earlier...
Introduction. Solving large-scale discrete optimization problems requires the processing of large-sc...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
Portfolio-based algorithm selection has seen tremendous practical success over the past two decades....
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
Abstract. Noisy optimization is the optimization of objective functions corrupted by noise. A portfo...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
Introduction. Solving large-scale discrete optimization problems requires the processing of large-sc...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
Portfolio-based algorithm selection has seen tremendous practical success over the past two decades....
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
Abstract. Noisy optimization is the optimization of objective functions corrupted by noise. A portfo...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
International audienceNoisy optimization is the optimization of objective functions corrupted by noi...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
This manuscript concentrates in studying methods to handle the noise, including using resampling met...
Introduction. Solving large-scale discrete optimization problems requires the processing of large-sc...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
Portfolio-based algorithm selection has seen tremendous practical success over the past two decades....