International audienceRepresentation learning algorithms are designed to learn abstract features that characterize data. State representation learning (SRL) focuses on a particular kind of representation learning where learned features are in low dimension, evolve through time, and are influenced by actions of an agent. The representation is learned to capture the variation in the environment generated by the agent's actions; this kind of representation is particularly suitable for robotics and control scenarios. In particular, the low dimension characteristic of the representation helps to overcome the curse of dimensionality, provides easier interpretation and utilization by humans and can help improve performance and speed in policy lear...
In the quest for efficient and robust learning methods, combining unsupervised state representation ...
Abstract Robot learning is critically enabled by the avail-ability of appropriate state representati...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
International audienceRepresentation learning algorithms are designed to learn abstract features tha...
International audienceState representation learning aims at learning compact representations from ra...
Representation learning is a central topic in the field of deep learning. It aims at extracting usef...
This thesis seeks to extend the capabilities of state representation learning (SRL) to help scale de...
Github repo: https://github.com/araffin/srl-zoo Documentation: https://srl-zoo.readthedocs.io/en/lat...
In control, the objective is to find a mapping from states to actions that steer a system to a desir...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Abstract—State representations critically affect the effective-ness of learning in robots. In this p...
We introduce Recurrent State Representation Learning (RSRL) to tackle the problem of state represent...
International audienceOur understanding of the world depends highly on our capacity to produce intui...
Choosing an appropriate representation of the environment for the underlying decision-making process...
Learning to control robots without human supervision and prolonged engineering effort has been a lon...
In the quest for efficient and robust learning methods, combining unsupervised state representation ...
Abstract Robot learning is critically enabled by the avail-ability of appropriate state representati...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
International audienceRepresentation learning algorithms are designed to learn abstract features tha...
International audienceState representation learning aims at learning compact representations from ra...
Representation learning is a central topic in the field of deep learning. It aims at extracting usef...
This thesis seeks to extend the capabilities of state representation learning (SRL) to help scale de...
Github repo: https://github.com/araffin/srl-zoo Documentation: https://srl-zoo.readthedocs.io/en/lat...
In control, the objective is to find a mapping from states to actions that steer a system to a desir...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Abstract—State representations critically affect the effective-ness of learning in robots. In this p...
We introduce Recurrent State Representation Learning (RSRL) to tackle the problem of state represent...
International audienceOur understanding of the world depends highly on our capacity to produce intui...
Choosing an appropriate representation of the environment for the underlying decision-making process...
Learning to control robots without human supervision and prolonged engineering effort has been a lon...
In the quest for efficient and robust learning methods, combining unsupervised state representation ...
Abstract Robot learning is critically enabled by the avail-ability of appropriate state representati...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...