Probabilistic planners have improved recently to the point that they can solve difficult tasks with complex and expressive models. In contrast, learners cannot tackle yet the expressive models that planners do, which forces complex models to be mostly handcrafted. We propose a new learning approach that can learn relational probabilistic models with both action effects and exogenous effects. The proposed learning approach combines a multi-valued variant of inductive logic programming for the generation of candidate models, with an optimization method to select the best set of planning operators to model a problem. We also show how to combine this learner with reinforcement learning algorithms to solve complete problems. Finally, experimenta...
The ways in which an agent\u27s actions affect the world can often be modeled compactly using a set ...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
In recent years, there has been a growing interest in using rich representations such as relational ...
Probabilistic planners have improved recently to the point that they can solve difficult tasks with ...
International audienceProbabilistic planners have improved recently to the point that they can solve...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
AI researchers have long studied algorithms for plan-ning and learning-to-plan within highly structu...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
To learn to behave in highly complex domains, agents must represent and learn compact models of the ...
In recent years, there has been a growing interest in using rich representations such as relational...
Using machine learning techniques for planning is getting in-creasingly more important in recent yea...
Using machine learning techniques for planning is getting increasingly more important in recent year...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
The ways in which an agent\u27s actions affect the world can often be modeled compactly using a set ...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
In recent years, there has been a growing interest in using rich representations such as relational ...
Probabilistic planners have improved recently to the point that they can solve difficult tasks with ...
International audienceProbabilistic planners have improved recently to the point that they can solve...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Probabilistic planners are very flexible tools that can provide good solutions for difficult tasks. ...
Relational reinforcement learning is presented, a learning technique that combines reinforcement lea...
AI researchers have long studied algorithms for plan-ning and learning-to-plan within highly structu...
A fundamental problem in reinforcement learning is balancing exploration and exploitation. We addres...
To learn to behave in highly complex domains, agents must represent and learn compact models of the ...
In recent years, there has been a growing interest in using rich representations such as relational...
Using machine learning techniques for planning is getting in-creasingly more important in recent yea...
Using machine learning techniques for planning is getting increasingly more important in recent year...
Automated planning has proven to be useful to solve problems where an agent has to maximize a reward...
The ways in which an agent\u27s actions affect the world can often be modeled compactly using a set ...
In this paper we present a new method for reinforcement learning in relational domains. A logical la...
In recent years, there has been a growing interest in using rich representations such as relational ...