International audienceOnline model-free reinforcement learning (RL) methods with continuous actions are playing a prominent role when dealing with real-world applications such as Robotics. However, when confronted to non-stationary environments, these methods crucially rely on an exploration-exploitation tradeoff which is rarely dynamically and automatically adjusted to changes in the environment. Here we propose an active exploration algorithm for RL in structured (parameterized) continuous action space. This framework deals with a set of discrete actions, each of which is parameterized with continuous variables. Discrete exploration is controlled through a Boltzmann softmax function with an inverse temperature β parameter. In parallel, a ...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
Dynamic control tasks are good candidates for the application of reinforcement learning techniques. ...
International audienceOnline model-free reinforcement learning (RL) methods with continuous actions ...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
International audienceDynamic uncontrolled human-robot interactions (HRIs) require robots to be able...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
Reinforcement learning for robot control tasks in continuous environments is a challenging problem d...
Reinforcement learning for robot control tasks in continuous environments is a challenging problem d...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
Dynamic control tasks are good candidates for the application of reinforcement learning techniques. ...
International audienceOnline model-free reinforcement learning (RL) methods with continuous actions ...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
As the complexity of robots and other autonomous systems increases, it becomes more important that t...
International audienceDynamic uncontrolled human-robot interactions (HRIs) require robots to be able...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
Reinforcement learning for robot control tasks in continuous environments is a challenging problem d...
Reinforcement learning for robot control tasks in continuous environments is a challenging problem d...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
Dynamic control tasks are good candidates for the application of reinforcement learning techniques. ...