Decision-making problems can be modeled as combinatorial optimization problems with Constraint Programming formalisms such as Constrained Optimization Problems. However, few Constraint Programming formalisms can deal with both optimization and uncertainty at the same time, and none of them are convenient to model problems we tackle in this paper. Here, we propose a way to deal with combinatorial optimization problems under uncertainty within the classical Constrained Optimization Problems formalism by injecting the Rank Dependent Utility from decision theory. We also propose a proof of concept of our method to show it is implementable and can solve concrete decision-making problems using a regular constraint solver, and propose a bot that...
Variational inequalities are modeling tools used to capture a variety of decision-making problems ar...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
We consider constrained optimisation problems with a real-valued, bounded objective function on an a...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
In this paper, we propose a challenging research direction for Constraint Programming and optimizat...
This paper defines a logic model of optimization under uncertainty which optimizes the expectation o...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
This competition paper presents microPhantom, a bot playing microRTS and participating in the 2020 m...
Constraint Programming (CP) is a programming paradigm where relations between variables can be state...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
The works presented here concern the study of decision problems in terms of algorithms.Most works in...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Variational inequalities are modeling tools used to capture a variety of decision-making problems ar...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
We consider constrained optimisation problems with a real-valued, bounded objective function on an a...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
We investigate a constrained optimization problem for which there is uncertainty about a constraint ...
In this paper, we propose a challenging research direction for Constraint Programming and optimizat...
This paper defines a logic model of optimization under uncertainty which optimizes the expectation o...
We present an extensive study of methods for exactly solving stochastic constraint (optimisation) pr...
This competition paper presents microPhantom, a bot playing microRTS and participating in the 2020 m...
Constraint Programming (CP) is a programming paradigm where relations between variables can be state...
Combinatorial optimisation problems often contain uncertainty that has to be taken into account to p...
The works presented here concern the study of decision problems in terms of algorithms.Most works in...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
Variational inequalities are modeling tools used to capture a variety of decision-making problems ar...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...
We investigate the probabilistic feasibility of randomized solutions to two distinct classes of unce...