Reinforcement Learning methods are capable of solving complex problems, but resulting policies might perform poorly in environments that are even slightly different. In robotics especially, training and deployment conditions often vary and data collection is expensive, making retraining undesirable. Simulation training allows for feasible training times, but on the other hand suffer from a reality-gap when applied in real-world settings. This raises the need of efficient adaptation of policies acting in new environments. We consider the problem of transferring knowledge within a family of similar Markov decision processes. We assume that Q-functions are generated by some low-dimensional latent variable. Given such a Q-function, we can find ...
To quickly achieve good performance, reinforcement-learning algorithms for acting in large continuou...
A summary of the state-of-the-art reinforcement learning in robotics is given, in terms of both algo...
We are interested in how to design reinforcement learning agents that provably reduce the sample com...
Reinforcement Learning methods are capable of solving complex problems, but resulting policies might...
The past decade has witnessed enormous progress in reinforcement learning, with intelligent agents l...
Transfer in machine learning is the process of using knowledge learned in a source domain to speedup...
Reinforcement learning algorithms are very effective at learning policies (mappings from states to a...
Variational Auto Encoder (VAE) provide an efficient latent space representation of complex data dist...
We examine the problem of Transfer in Reinforcement Learning and present a method to utilize knowled...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
We present a data-efficient framework for solving sequential decision-making problems which exploits...
Applying deep reinforcement learning to physical systems, as opposed to learning in simulation, pres...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
Policy Reuse is a reinforcement learning technique that efficiently learns a new policy by using pas...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
To quickly achieve good performance, reinforcement-learning algorithms for acting in large continuou...
A summary of the state-of-the-art reinforcement learning in robotics is given, in terms of both algo...
We are interested in how to design reinforcement learning agents that provably reduce the sample com...
Reinforcement Learning methods are capable of solving complex problems, but resulting policies might...
The past decade has witnessed enormous progress in reinforcement learning, with intelligent agents l...
Transfer in machine learning is the process of using knowledge learned in a source domain to speedup...
Reinforcement learning algorithms are very effective at learning policies (mappings from states to a...
Variational Auto Encoder (VAE) provide an efficient latent space representation of complex data dist...
We examine the problem of Transfer in Reinforcement Learning and present a method to utilize knowled...
Abstract—Reinforcement learning enables an agent to learn behavior by acquiring experience through t...
We present a data-efficient framework for solving sequential decision-making problems which exploits...
Applying deep reinforcement learning to physical systems, as opposed to learning in simulation, pres...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
Policy Reuse is a reinforcement learning technique that efficiently learns a new policy by using pas...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
To quickly achieve good performance, reinforcement-learning algorithms for acting in large continuou...
A summary of the state-of-the-art reinforcement learning in robotics is given, in terms of both algo...
We are interested in how to design reinforcement learning agents that provably reduce the sample com...