Policy search in reinforcement learning (RL) is a practical approach to interact directly with environments in parameter spaces, that often deal with dilemmas of local optima and real-time sample collection. A promising algorithm, known as guided policy search (GPS), is capable of handling the challenge of training samples using trajectory-centric methods. It can also provide asymptotic local convergence guarantees. However, in its current form, the GPS algorithm cannot operate in sequential multitask learning scenarios. This is due to its batch-style training requirement, where all training samples are collectively provided at the start of the learning process. The algorithm's adaptation is thus hindered for real-time applications, where t...
Many reinforcement learning (RL) tasks, especially in robotics, consist of multiple sub-tasks that ...
This paper presents a novel graph reinforcement learning (RL) architecture to solve multi-robot task...
Reinforcement Learning (RL) is the field of research focused on solving sequential decision-making t...
Policy search in reinforcement learning (RL) is a practical approach to interact directly with envir...
Continuous action policy search is currently the focus of intensive research, driven both by the rec...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
International audienceMost policy search (PS) algorithms require thousands of training episodes to f...
Reinforcement Learning (RL) problems appear in diverse real-world applications and are gaining subst...
We reveal a link between particle filtering methods and direct policy search reinforcement learning,...
In real-world robotic applications, many factors, both at low-level (e.g., vision and motion control...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
Abstract As an important approach to solving complex sequential decision problems, reinforcement lea...
Direct policy search has been successful in learning challenging real world robotic motor skills by ...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Reinforcement learning has shown great promise in the training of robot behavior due to the sequenti...
Many reinforcement learning (RL) tasks, especially in robotics, consist of multiple sub-tasks that ...
This paper presents a novel graph reinforcement learning (RL) architecture to solve multi-robot task...
Reinforcement Learning (RL) is the field of research focused on solving sequential decision-making t...
Policy search in reinforcement learning (RL) is a practical approach to interact directly with envir...
Continuous action policy search is currently the focus of intensive research, driven both by the rec...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
International audienceMost policy search (PS) algorithms require thousands of training episodes to f...
Reinforcement Learning (RL) problems appear in diverse real-world applications and are gaining subst...
We reveal a link between particle filtering methods and direct policy search reinforcement learning,...
In real-world robotic applications, many factors, both at low-level (e.g., vision and motion control...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
Abstract As an important approach to solving complex sequential decision problems, reinforcement lea...
Direct policy search has been successful in learning challenging real world robotic motor skills by ...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Reinforcement learning has shown great promise in the training of robot behavior due to the sequenti...
Many reinforcement learning (RL) tasks, especially in robotics, consist of multiple sub-tasks that ...
This paper presents a novel graph reinforcement learning (RL) architecture to solve multi-robot task...
Reinforcement Learning (RL) is the field of research focused on solving sequential decision-making t...