We formalize a model for supervised learning of action strategies in dynamic stochastic domains and show that PAC-learning results on Occam algorithms hold in this model as well. We then identify a class of rule based action strategies for which polynomial time learning is possible. The representation of strategies is generalization of decision lists; strategies include rules with existentially quantified conditions, simple recursive predicates, and small internal state, but are syntactically restricted. We also study the learnability of hierarchically composed strategies where a subroutine already acquired can be used as a basic action in a higher level strategy. We prove some positive results in this setting, but also show that in some ca...
This paper studies the relationships between learning about rules of thumb (represented by classifie...
There has been intense interest in hierarchical rein-forcement learning as a way to make Markov de-c...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
In dynamic epistemic logic, actions are described using action models. In this paper we introduce a ...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
We present a new algorithm for polynomial time learning of optimal behavior in stochastic games. Thi...
Abstract—The computational complexity of learning in sequen-tial decision problems grows exponential...
Access restricted to the OSU CommunityReinforcement learning considers the problem of learning a tas...
International audienceOur goal is to propose an algorithm for robots to learn sequences of actions, ...
In this paper we propose a strategy learning model for autonomous agents based on classification. In...
AbstractWe present a new algorithm for polynomial time learning of optimal behavior in single-contro...
International audienceWe aim at a robot capable to learn sequences of actions to achieve a field of ...
Abstract: We consider boundedly rational learning processes in which players have a priori limited s...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
This paper studies the relationships between learning about rules of thumb (represented by classifie...
There has been intense interest in hierarchical rein-forcement learning as a way to make Markov de-c...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
We present new algorithms for learning a logical model of actions' effects and preconditions in part...
In dynamic epistemic logic, actions are described using action models. In this paper we introduce a ...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
We present a new algorithm for polynomial time learning of optimal behavior in stochastic games. Thi...
Abstract—The computational complexity of learning in sequen-tial decision problems grows exponential...
Access restricted to the OSU CommunityReinforcement learning considers the problem of learning a tas...
International audienceOur goal is to propose an algorithm for robots to learn sequences of actions, ...
In this paper we propose a strategy learning model for autonomous agents based on classification. In...
AbstractWe present a new algorithm for polynomial time learning of optimal behavior in single-contro...
International audienceWe aim at a robot capable to learn sequences of actions to achieve a field of ...
Abstract: We consider boundedly rational learning processes in which players have a priori limited s...
This paper presents a new method for the autonomous construction of hierarchical action and state re...
This paper studies the relationships between learning about rules of thumb (represented by classifie...
There has been intense interest in hierarchical rein-forcement learning as a way to make Markov de-c...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...