Reinforcement learning (RL) is well known as one of the methods that can be applied to unknown problems. However, because optimization at every state requires trial-and-error, the learning time becomes large when environment has many states. If there exist solutions to similar problems and they are used during the exploration, some of trial-anderror can be spared and the learning can take a shorter time. In this paper, the authors propose to reuse an abstract policy, a representative of a solution constructed by learning vector quantization (LVQ) algorithm, to improve initial performance of an RL learner in a similar but different problem. Furthermore, it is investigated whether or not the policy can adapt to a new environment while preserv...
A great intention is lately focused on Reinforcement Learning (RL) methods. The article is focused o...
Value-based approaches to reinforcement learning (RL) maintain a value function that measures the lo...
Graduation date: 2005Reinforcement learning (RL) is the study of systems that learn from interaction...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
Dynamic programming methods are capable of solving reinforcement learning problems, in which an age...
We are interested in the following general question: is it pos- sible to abstract knowledge that is ...
Abstract. The Q-learning is one of typical reinforcement learning methods. Since the Q-learning requ...
People grow up every day exposed to the infinite state space environment interacting with active bio...
The Reinforcement learning (RL) algorithms solve a wide range of problems we faced. The topic of RL ...
Reinforcement learning has proven to be a set of successful techniques for nding optimal policies ...
This paper analyzes the suitability of reinforcement learning (RL) for both programming and adapti...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
A great intention is lately focused on Reinforcement Learning (RL) methods. The article is focused o...
Value-based approaches to reinforcement learning (RL) maintain a value function that measures the lo...
Graduation date: 2005Reinforcement learning (RL) is the study of systems that learn from interaction...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
Reinforcement learning (RL) enables an agent to find a solution to a problem by interacting with the...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
Dynamic programming methods are capable of solving reinforcement learning problems, in which an age...
We are interested in the following general question: is it pos- sible to abstract knowledge that is ...
Abstract. The Q-learning is one of typical reinforcement learning methods. Since the Q-learning requ...
People grow up every day exposed to the infinite state space environment interacting with active bio...
The Reinforcement learning (RL) algorithms solve a wide range of problems we faced. The topic of RL ...
Reinforcement learning has proven to be a set of successful techniques for nding optimal policies ...
This paper analyzes the suitability of reinforcement learning (RL) for both programming and adapti...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
A great intention is lately focused on Reinforcement Learning (RL) methods. The article is focused o...
Value-based approaches to reinforcement learning (RL) maintain a value function that measures the lo...
Graduation date: 2005Reinforcement learning (RL) is the study of systems that learn from interaction...