The goal of task transfer in reinforcement learning is migrating the action policy of an agent to the target task from the source task. Given their successes on robotic action planning, current methods mostly rely on two requirements: exactlyrelevant expert demonstrations or the explicitly-coded cost function on target task, both of which, however, are inconvenient to obtain in practice. In this paper, we relax these two strong conditions by developing a novel task transfer framework where the expert preference is applied as a guidance. In particular, we alternate the following two steps: Firstly, letting experts apply pre-defined preference rules to select related expert demonstrates for the target task. Secondly, based on the selection re...
ABSTRACT Transfer learning refers to the process of conveying experience from a simple task to anoth...
New flexible teaching methods for robotics are needed to automate repetitive tasks that are currentl...
Reinforcement learning has proven capable of extending the applicability of machine learning to doma...
International audienceLearning by imitation, among the most promising techniques for reinforcement l...
In a reinforcement learning setting, the goal of transfer learning is to improve performance on a ta...
Transfer learning significantly accelerates the reinforcement learning process by exploiting relevan...
At the heart of multi-robot task allocation lies the ability to compare multiple options in order to...
In a reinforcement learning setting, the goal of transfer learn-ing is to improve performance on a t...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
When transferring knowledge between reinforcement learning agents with different state representatio...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Reinforcement Learning has recently emerged as a viable solution for various sequential decision-mak...
This work proposes an approach based on reward shaping techniques in a reinforcement learning setti...
Robots are often highly non-linear dynamical systems with many degrees of freedom, making solving mo...
The main objective of Transfer Learning is to reuse knowledge acquired in a previous learned task, i...
ABSTRACT Transfer learning refers to the process of conveying experience from a simple task to anoth...
New flexible teaching methods for robotics are needed to automate repetitive tasks that are currentl...
Reinforcement learning has proven capable of extending the applicability of machine learning to doma...
International audienceLearning by imitation, among the most promising techniques for reinforcement l...
In a reinforcement learning setting, the goal of transfer learning is to improve performance on a ta...
Transfer learning significantly accelerates the reinforcement learning process by exploiting relevan...
At the heart of multi-robot task allocation lies the ability to compare multiple options in order to...
In a reinforcement learning setting, the goal of transfer learn-ing is to improve performance on a t...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
When transferring knowledge between reinforcement learning agents with different state representatio...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Reinforcement Learning has recently emerged as a viable solution for various sequential decision-mak...
This work proposes an approach based on reward shaping techniques in a reinforcement learning setti...
Robots are often highly non-linear dynamical systems with many degrees of freedom, making solving mo...
The main objective of Transfer Learning is to reuse knowledge acquired in a previous learned task, i...
ABSTRACT Transfer learning refers to the process of conveying experience from a simple task to anoth...
New flexible teaching methods for robotics are needed to automate repetitive tasks that are currentl...
Reinforcement learning has proven capable of extending the applicability of machine learning to doma...