In this thesis several approaches for optimization and decision-making under uncertainty with a strong focus on applications in multi-agent systems are considered. These approaches are chance constrained optimization, random convex programs, and partially observable Markov decision processes
The works presented here concern the study of decision problems in terms of algorithms.Most works in...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
Most real-world search and optimization problems naturally involve multiple criteria as objectives. ...
Markov decision processes model stochastic uncertainty in systems and allow one to construct strateg...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
In the settings of decision-making-under-uncertainty problems, an agent takes an action on the envir...
We consider the problem of ranking and selection with multiple-objectives in the presence of uncerta...
International audienceBecause of uncertainties on models and variables, deterministic multidisciplin...
A common approach in coping with multiperiod optimization problems under uncertainty where statistic...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
Cette thèse s’intéresse à l’optimisation multiobjectif sans contrainte lorsque les objectifs sont ex...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
Chance-constrained optimization is a powerful mathematical framework that addresses decision-making ...
Planning under uncertainty is a central problem in developing intelligent autonomous systems. The tr...
In this paper, we consider optimization problems involving multiple agents. Each agent introduces it...
The works presented here concern the study of decision problems in terms of algorithms.Most works in...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
Most real-world search and optimization problems naturally involve multiple criteria as objectives. ...
Markov decision processes model stochastic uncertainty in systems and allow one to construct strateg...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
In the settings of decision-making-under-uncertainty problems, an agent takes an action on the envir...
We consider the problem of ranking and selection with multiple-objectives in the presence of uncerta...
International audienceBecause of uncertainties on models and variables, deterministic multidisciplin...
A common approach in coping with multiperiod optimization problems under uncertainty where statistic...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
Cette thèse s’intéresse à l’optimisation multiobjectif sans contrainte lorsque les objectifs sont ex...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
Chance-constrained optimization is a powerful mathematical framework that addresses decision-making ...
Planning under uncertainty is a central problem in developing intelligent autonomous systems. The tr...
In this paper, we consider optimization problems involving multiple agents. Each agent introduces it...
The works presented here concern the study of decision problems in terms of algorithms.Most works in...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
Most real-world search and optimization problems naturally involve multiple criteria as objectives. ...