When applying reinforcement learning in domains with very large or continuous state spaces, the experience obtained by the learning agent in the interaction with the environment must be generalized. The generalization methods are usually based on the approximation of the value functions used to compute the action policy and tackled in two different ways. On the one hand by using an approximation of the value functions based on a supervized learning method. On the other hand, by discretizing the environment to use a tabular representation of the value functions. In this work, we propose an algorithm that uses both approaches to use the benefits of both mechanisms, allowing a higher performance. The approach is based on two learning phases. I...
Deep reinforcement learning uses simulators as abstract oracles to interact with the environment. In...
Reinforcement learning is the problem faced by an agent that must learn behavior through trial-and-e...
The application of reinforcement learning to problems with continuous domains requires representing ...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
There are two main branches of reinforcement learning: methods that search di-rectly in the space of...
Reinforcement learning is a machine learning paradigm that deals with optimisation and learns by int...
Reinforcement learning is a general computational framework for learning sequential decision strate...
Summarization: The majority of learning algorithms available today focus on approximating the state ...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
textabstractMany traditional reinforcement-learning algorithms have been designed for problems with ...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Reinforcement learning is a general and powerful way to formulate complex learning problems and acqu...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Deep reinforcement learning uses simulators as abstract oracles to interact with the environment. In...
Reinforcement learning is the problem faced by an agent that must learn behavior through trial-and-e...
The application of reinforcement learning to problems with continuous domains requires representing ...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
There are two main branches of reinforcement learning: methods that search di-rectly in the space of...
Reinforcement learning is a machine learning paradigm that deals with optimisation and learns by int...
Reinforcement learning is a general computational framework for learning sequential decision strate...
Summarization: The majority of learning algorithms available today focus on approximating the state ...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
textabstractMany traditional reinforcement-learning algorithms have been designed for problems with ...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Reinforcement learning is a general and powerful way to formulate complex learning problems and acqu...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Deep reinforcement learning uses simulators as abstract oracles to interact with the environment. In...
Reinforcement learning is the problem faced by an agent that must learn behavior through trial-and-e...
The application of reinforcement learning to problems with continuous domains requires representing ...