International audienceRecently, a convergence proof of stochastic search algorithms toward finite size Pareto set approximations of continuous multi-objective optimization problems has been given. The focus was on obtaining a finite approximation that captures the entire solution set in some suitable sense, which was defined by the concept of ε-dominance. Though bounds on the quality of the limit approximation---which are entirely determined by the archiving strategy and the value of ε---have been obtained, the strategies do not guarantee to obtain a gap free approximation of the Pareto front. That is, such approximations A can reveal gaps in the sense that points f in the Pareto front can exist such that the distance of f to any image poin...
research reportIn this work we develop a framework for the approximation of the entire set of $\epsi...
We present some typical algorithms used for finding global minimum/maximum of a function defined on...
International audienceAchieving a high-resolution approximation and hitting the Pareto optimal set w...
International audienceRecently, a convergence proof of stochastic search algorithms toward finite si...
International audienceIn this work we investigate the convergence of stochastic search algorithms to...
In this work we study the convergence of generic stochastic search algorithms toward the Pareto set ...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
We deal with the problem of minimizing the expectation of a real valued random function over the wea...
International audienceIn this paper we address the problem of computing suitable representations of ...
Search algorithms for Pareto optimization are designed to obtain multiple solutions, each offering a...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Many real-world optimization problems involve balancing multiple objectives. When there is no soluti...
In this paper, we propose multi-timescale, sequential algorithms for deterministic optimization whic...
We present some typical algorithms used for finding global minimum/ maximum of a function defined on...
research reportIn this work we develop a framework for the approximation of the entire set of $\epsi...
We present some typical algorithms used for finding global minimum/maximum of a function defined on...
International audienceAchieving a high-resolution approximation and hitting the Pareto optimal set w...
International audienceRecently, a convergence proof of stochastic search algorithms toward finite si...
International audienceIn this work we investigate the convergence of stochastic search algorithms to...
In this work we study the convergence of generic stochastic search algorithms toward the Pareto set ...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
We deal with the problem of minimizing the expectation of a real valued random function over the wea...
International audienceIn this paper we address the problem of computing suitable representations of ...
Search algorithms for Pareto optimization are designed to obtain multiple solutions, each offering a...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Many real-world optimization problems involve balancing multiple objectives. When there is no soluti...
In this paper, we propose multi-timescale, sequential algorithms for deterministic optimization whic...
We present some typical algorithms used for finding global minimum/ maximum of a function defined on...
research reportIn this work we develop a framework for the approximation of the entire set of $\epsi...
We present some typical algorithms used for finding global minimum/maximum of a function defined on...
International audienceAchieving a high-resolution approximation and hitting the Pareto optimal set w...