Reinforcement learning is a general and powerful way to formulate complex learning problems and acquire good system behaviour. The goal of a reinforcement learning system is to maximize a long term sum of instantaneous rewards provided by a teacher. In its extremum form, reinforcement learning only requires that the teacher can provide a measure of success. This formulation does not require a training set with correct responses, and allows the system to become better than its teacher. In reinforcement learning much of the burden is moved from the teacher to the training algorithm. The exact and general algorithms that exist for these problems are based on dynamic programming (DP), and have a computational complexity that grows exponentially...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
The application of reinforcement learning to problems with continuous domains requires representing ...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Reinforcement learning is a general and powerful way to formulate complex learning problems and acqu...
The framework of dynamic programming (DP) and reinforcement learning (RL) can be used to express imp...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
In this thesis, the theory of reinforcement learning is described and its relation to learning in bi...
Access restricted to the OSU CommunityReinforcement learning considers the problem of learning a tas...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Two new reinforcement learning algorithms are presented. Both use a binary tree to store simple loca...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
The application of reinforcement learning to problems with continuous domains requires representing ...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Reinforcement learning is a general and powerful way to formulate complex learning problems and acqu...
The framework of dynamic programming (DP) and reinforcement learning (RL) can be used to express imp...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
Reinforcement learning is a paradigm for learning decision-making tasks from interaction with the en...
In this thesis, the theory of reinforcement learning is described and its relation to learning in bi...
Access restricted to the OSU CommunityReinforcement learning considers the problem of learning a tas...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Two new reinforcement learning algorithms are presented. Both use a binary tree to store simple loca...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
The application of reinforcement learning to problems with continuous domains requires representing ...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...