This paper discusses a system that accelerates reinforcement learning by using transfer from related tasks. Without such transfer, even if two tasks are very similar at some abstract level, an extensive re-learning eort is required. The system achieves much of its power by transferring parts of previously learned solutions rather than a single complete solution. The system exploits strong features in the multi-dimensional function produced by reinforcement learning in solving a particular task. These features are stable and easy to recognize early in the learning process. They generate a partitioning of the state space and thus the function. The partition is represented as a graph. This is used to index and compose functions stored in a cas...
Thesis proposal.Reinforcement learning systems are interesting because they meet three major criteri...
Abstract Transfer in reinforcement learning is a novel research area that focuses on the development...
Transfer learning concerns applying knowledge learned in one task (the source) to improve learning a...
Abstract. This paper presents a system that transfers the results of prior learning to speed up rein...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
Abstract. Reinforcement learning agents can successfully learn in a variety of difficult tasks. A fu...
Reinforcement learning agents can successfully learn in a variety of difficult tasks. A fundamental ...
Transfer learning has recently gained popularity due to the development of algorithms that can succe...
This paper addresses automatic partitioning in complex reinforcement learning tasks with multiple ag...
Agents in reinforcement learning [2] tasks may learn slowly in large or complex tasks – transfer lea...
In this paper, a new approach for learning to solve complex problems by reinforcement is proposed. I...
Reinforcement learning is a machine learning paradigm that deals with optimisation and learns by int...
Reinforcement Learning (RL) has seen exponential performance improvements over the past decade, achi...
Thesis proposal.Reinforcement learning systems are interesting because they meet three major criteri...
Abstract Transfer in reinforcement learning is a novel research area that focuses on the development...
Transfer learning concerns applying knowledge learned in one task (the source) to improve learning a...
Abstract. This paper presents a system that transfers the results of prior learning to speed up rein...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
The goal of transfer learning algorithms is to utilize knowledge gained in a source task to speed up...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
Abstract. Reinforcement learning agents can successfully learn in a variety of difficult tasks. A fu...
Reinforcement learning agents can successfully learn in a variety of difficult tasks. A fundamental ...
Transfer learning has recently gained popularity due to the development of algorithms that can succe...
This paper addresses automatic partitioning in complex reinforcement learning tasks with multiple ag...
Agents in reinforcement learning [2] tasks may learn slowly in large or complex tasks – transfer lea...
In this paper, a new approach for learning to solve complex problems by reinforcement is proposed. I...
Reinforcement learning is a machine learning paradigm that deals with optimisation and learns by int...
Reinforcement Learning (RL) has seen exponential performance improvements over the past decade, achi...
Thesis proposal.Reinforcement learning systems are interesting because they meet three major criteri...
Abstract Transfer in reinforcement learning is a novel research area that focuses on the development...
Transfer learning concerns applying knowledge learned in one task (the source) to improve learning a...