AbstractInspired by game theory representations, Bayesian networks, influence diagrams, structured Markov decision process models, logic programming, and work in dynamical systems, the independent choice logic (ICL) is a semantic framework that allows for independent choices (made by various agents, including nature) and a logic program that gives the consequence of choices. This representation can be used as a specification for agents that act in a world, make observations of that world and have memory, as well as a modelling tool for dynamic environments with uncertainty. The rules specify the consequences of an action, what can be sensed and the utility of outcomes. This paper presents a possible-worlds semantics for ICL, and shows how t...
We investigate probabilistic propositional logics as a way of expressing, and reasoning about decisi...
An autonomous decision maker, such as an intelligent agent, must make decisions in the presence of u...
Numerous formalisms and dedicated algorithms have been designed in the last decades to model and sol...
AbstractInspired by game theory representations, Bayesian networks, influence diagrams, structured M...
This paper introduces the independent choice logic, and in particular the "single agent with na...
Multi-agent systems that use game-theoretic analysis for decision making traditionally take a normat...
In descriptive decision and game theory, one specifies a model of a situation faced by agents and us...
AbstractThe independent choice logic (ICL) is part of a project to combine logic and decision/game t...
The independent choice logic (ICL) is part of a project to combine logic and decision/game theory in...
This thesis is about how to represent and solve decision problems in Bayesian decision theory (e.g. ...
In this paper we present a framework for logic programming agents to take part in games in such a wa...
Abstract. We present a framework for decision making with circumstance-dependent preferences and dec...
AbstractThis paper is about how to represent and solve decision problems in Bayesian decision theory...
Boolean and discrete networks play an important role in many domains such as cellular automata. This...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
We investigate probabilistic propositional logics as a way of expressing, and reasoning about decisi...
An autonomous decision maker, such as an intelligent agent, must make decisions in the presence of u...
Numerous formalisms and dedicated algorithms have been designed in the last decades to model and sol...
AbstractInspired by game theory representations, Bayesian networks, influence diagrams, structured M...
This paper introduces the independent choice logic, and in particular the "single agent with na...
Multi-agent systems that use game-theoretic analysis for decision making traditionally take a normat...
In descriptive decision and game theory, one specifies a model of a situation faced by agents and us...
AbstractThe independent choice logic (ICL) is part of a project to combine logic and decision/game t...
The independent choice logic (ICL) is part of a project to combine logic and decision/game theory in...
This thesis is about how to represent and solve decision problems in Bayesian decision theory (e.g. ...
In this paper we present a framework for logic programming agents to take part in games in such a wa...
Abstract. We present a framework for decision making with circumstance-dependent preferences and dec...
AbstractThis paper is about how to represent and solve decision problems in Bayesian decision theory...
Boolean and discrete networks play an important role in many domains such as cellular automata. This...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
We investigate probabilistic propositional logics as a way of expressing, and reasoning about decisi...
An autonomous decision maker, such as an intelligent agent, must make decisions in the presence of u...
Numerous formalisms and dedicated algorithms have been designed in the last decades to model and sol...