In this paper, we propose a challenging research direction for Constraint Programming and optimization techniques in general. We address problems where decisions to be taken affect and are affected by complex systems, which exhibit phenomena emerging from a collection of interacting objects, capable to self organize and to adapt their behaviour according to their history and feedback. Such systems are unfortunately impervious to modeling efforts via state-of-the-art combinatorial optimization techniques. We provide some hints on approaches to connect and integrate decision making and optimization technology with complex systems via machine learning, game theory and mechanism design. In the first case, the aim is to extract modeling ...
Recent work has shown how information theory extends conventional full-rationality game theory to al...
This paper seeks to connect the literatures from artificial intelligence, economics, and cognitive s...
The central goal in multiagent systems is to design local control laws for the individual agents to ...
In this paper, we propose a challenging research direction for Constraint Programming and optimizat...
Abstract. In this paper, we propose a challenging research direction for Constraint Programming and ...
A complex system is an artificial system that cannot be modeled analytically or optimized in an effe...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
A Complex System can be defined as a natural, artificial, social, or economic entity whose model inv...
International audienceGame theory is a highly successful paradigm for strategic decision making betw...
This paper presents a new way to map a Constraint Satisfaction Problem (CSP) onto a non-cooperative ...
Decision-making problems can be modeled as combinatorial optimization problems with Constraint Progr...
This paper introduces a parameterisation of learning algorithms for distributed constraint optimisat...
Summary. This paper addresses the application of distributed constraint optimization problems (DCOPs...
Sequential decision making is a fundamental task faced by any intelligent agent in an extended inter...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
Recent work has shown how information theory extends conventional full-rationality game theory to al...
This paper seeks to connect the literatures from artificial intelligence, economics, and cognitive s...
The central goal in multiagent systems is to design local control laws for the individual agents to ...
In this paper, we propose a challenging research direction for Constraint Programming and optimizat...
Abstract. In this paper, we propose a challenging research direction for Constraint Programming and ...
A complex system is an artificial system that cannot be modeled analytically or optimized in an effe...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
A Complex System can be defined as a natural, artificial, social, or economic entity whose model inv...
International audienceGame theory is a highly successful paradigm for strategic decision making betw...
This paper presents a new way to map a Constraint Satisfaction Problem (CSP) onto a non-cooperative ...
Decision-making problems can be modeled as combinatorial optimization problems with Constraint Progr...
This paper introduces a parameterisation of learning algorithms for distributed constraint optimisat...
Summary. This paper addresses the application of distributed constraint optimization problems (DCOPs...
Sequential decision making is a fundamental task faced by any intelligent agent in an extended inter...
Machine Learning has recently made significant advances in challenges such as speech and image recog...
Recent work has shown how information theory extends conventional full-rationality game theory to al...
This paper seeks to connect the literatures from artificial intelligence, economics, and cognitive s...
The central goal in multiagent systems is to design local control laws for the individual agents to ...