Reinforcement learning allows an agent to learn a behavior that has never been previously defined by humans. The agent discovers the environment and the different consequences of its actions through its interaction: it learns from its own experience, without having pre-established knowledge of the goals or effects of its actions. This thesis tackles how deep learning can help reinforcement learning to handle continuous spaces and environments with many degrees of freedom in order to solve problems closer to reality. Indeed, neural networks have a good scalability and representativeness. They make possible to approximate functions on continuous spaces and allow a developmental approach, because they require little a priori knowledge on the d...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
One major challenge of reinforcement learning is to efficiently explore an environment in order to l...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
Reinforcement learning allows an agent to learn a behavior that has never been previously defined by...
L'apprentissage par renforcement permet à un agent d'apprendre un comportement qui n'a jamais été pr...
International audienceA novel reinforcement learning algorithm that deals with both continuous state...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Recent advances of actor-critic methods in deep reinforcement learning have enabled performing sever...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
International audienceIn the framework of model-free deep reinforcement learning with continuous sen...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
One major challenge of reinforcement learning is to efficiently explore an environment in order to l...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
Reinforcement learning allows an agent to learn a behavior that has never been previously defined by...
L'apprentissage par renforcement permet à un agent d'apprendre un comportement qui n'a jamais été pr...
International audienceA novel reinforcement learning algorithm that deals with both continuous state...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Recent advances of actor-critic methods in deep reinforcement learning have enabled performing sever...
An intelligent agent immerged in its environment must be able to both understand andinteract with th...
International audienceIn the framework of model-free deep reinforcement learning with continuous sen...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...
One major challenge of reinforcement learning is to efficiently explore an environment in order to l...
Reinforcement learning agents with artificial neural networks have previously been shown to acquire ...