International audienceIn multi-task reinforcement learning there are two main challenges: at training time, the ability to learn different policies with a single model; at test time, inferring which of those policies applying without an external signal. In the case of continual reinforcement learning a third challenge arises: learning tasks sequentially without forgetting the previous ones. In this paper, we tackle these challenges by proposing DisCoRL, an approach combining state representation learning and policy distillation. We experiment on a sequence of three simulated 2D navigation tasks with a 3 wheel omni-directional robot. Moreover, we tested our approach's robustness by transferring the final policy into a real life setting. The ...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Multi-task deep reinforcement learning (DRL) ambitiously aims to train a general agent that masters ...
International audienceIn multi-task reinforcement learning there are two main challenges: at trainin...
accepted to the Workshop on Multi-Task and Lifelong Reinforcement Learning, ICML 2019International a...
Policy search in reinforcement learning (RL) is a practical approach to interact directly with envir...
One of the main targets of artificial intelligence is to solve the complex control problems which ha...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Reinforcement learning has shown great promise in the training of robot behavior due to the sequenti...
The process for transferring knowledge of multiple reinforcement learning policies into a single mul...
Continual learning, a widespread ability in people and animals, aims to learn and acquire new knowle...
Deep reinforcement learning has enabled robots to learn motor skills from environmental interactions...
Deep Reinforcement Learning has been successfully applied to learn robotic control. However, the cor...
Continual learning is one of the key components of human learning and a necessary requirement of art...
In this article, we aim to provide a literature review of different formulations and approaches to c...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Multi-task deep reinforcement learning (DRL) ambitiously aims to train a general agent that masters ...
International audienceIn multi-task reinforcement learning there are two main challenges: at trainin...
accepted to the Workshop on Multi-Task and Lifelong Reinforcement Learning, ICML 2019International a...
Policy search in reinforcement learning (RL) is a practical approach to interact directly with envir...
One of the main targets of artificial intelligence is to solve the complex control problems which ha...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Reinforcement learning has shown great promise in the training of robot behavior due to the sequenti...
The process for transferring knowledge of multiple reinforcement learning policies into a single mul...
Continual learning, a widespread ability in people and animals, aims to learn and acquire new knowle...
Deep reinforcement learning has enabled robots to learn motor skills from environmental interactions...
Deep Reinforcement Learning has been successfully applied to learn robotic control. However, the cor...
Continual learning is one of the key components of human learning and a necessary requirement of art...
In this article, we aim to provide a literature review of different formulations and approaches to c...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Multi-task deep reinforcement learning (DRL) ambitiously aims to train a general agent that masters ...