Reinforcement learning has proven to be a set of successful techniques for nding optimal policies on uncertain and/or dynamic domains, such as the RoboCup. One of the problems on using such techniques appears with large state and action spaces, as it is the case of input information coming from the Robosoccer simulator. In this paper, we describe a new mechanism for solving the states generalization problem in reinforcement learning algorithms. This clustering mechanism is based on the vector quantization technique for signal analog-to-digital conversion and compression, and on the Generalized Lloyd Algorithm for the design of vector quantizers. Furthermore, we present the VQQL model, that integrates Q-Learning as reinforcement l...
Q-learning as well as other learning paradigms depend strongly on the representation of the underlyi...
We address the conflict between identification and control or alternatively, the conflict be-tween e...
This paper describes a novel hybrid reinforcement learning algorithm, Sarsa Learning Vector Quantiza...
Proceeding of: RoboCup-99: Robot Soccer World Cup III, July 27 to August 6, 1999, Stockholm, SwedenR...
Reinforcement learning har proven to be very successful for finding optimal policies on uncertian an...
Autonomous automata should not only be able to learn how to behave efficiently in any predefined int...
Value-based approaches to reinforcement learning (RL) maintain a value function that measures the lo...
Dynamic programming methods are capable of solving reinforcement learning problems, in which an age...
The convergence property of reinforcement learning has been extensively investigated in the field of...
This paper shows that the distributed representation found in Learning Vector Quantization (LVQ) ena...
International audienceIn this paper, we propose a contribution in the field of Reinforcement Learnin...
We introduce a novel type of actor-critic approach for deep reinforcement learning which is based on...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
Reinforcement learning (RL) is well known as one of the methods that can be applied to unknown probl...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Q-learning as well as other learning paradigms depend strongly on the representation of the underlyi...
We address the conflict between identification and control or alternatively, the conflict be-tween e...
This paper describes a novel hybrid reinforcement learning algorithm, Sarsa Learning Vector Quantiza...
Proceeding of: RoboCup-99: Robot Soccer World Cup III, July 27 to August 6, 1999, Stockholm, SwedenR...
Reinforcement learning har proven to be very successful for finding optimal policies on uncertian an...
Autonomous automata should not only be able to learn how to behave efficiently in any predefined int...
Value-based approaches to reinforcement learning (RL) maintain a value function that measures the lo...
Dynamic programming methods are capable of solving reinforcement learning problems, in which an age...
The convergence property of reinforcement learning has been extensively investigated in the field of...
This paper shows that the distributed representation found in Learning Vector Quantization (LVQ) ena...
International audienceIn this paper, we propose a contribution in the field of Reinforcement Learnin...
We introduce a novel type of actor-critic approach for deep reinforcement learning which is based on...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
Reinforcement learning (RL) is well known as one of the methods that can be applied to unknown probl...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Q-learning as well as other learning paradigms depend strongly on the representation of the underlyi...
We address the conflict between identification and control or alternatively, the conflict be-tween e...
This paper describes a novel hybrid reinforcement learning algorithm, Sarsa Learning Vector Quantiza...