A thesis presented for the degree of Doctor of Philosophy, School of Computer Science and Applied Mathematics. University of the Witwatersrand, South Africa. 26 August 2016.In the reinforcement learning paradigm, an agent learns by interacting with its environment. At each state, the agent receives a numerical reward. Its goal is to maximise the discounted sum of future rewards. One way it can do this is through learning a value function; a function which maps states to the discounted sum of future rewards. With an accurate value function and a model of the environment, the agent can take the optimal action in each state. In practice, however, the value function is approximated, and performance depends on the quality of the approximati...
Reinforcement learning algorithms hold promise in many complex domains, such as resource management ...
Discretization based approaches to solving online reinforcement learning problems have been studied ...
Reinforcement Learning (RL) is currently an active research area of Artificial Intelligence (AI) in ...
A thesis submitted to the Faculty of Science, School of Computational and Applied Mathematics Univer...
Feature reinforcement learning was introduced five years ago as a principled and practical approach ...
textIn reinforcement learning, an autonomous agent seeks an effective control policy for tackling a...
Reinforcement learning deals with the problem of sequential decision making in uncertain stochastic ...
Graduation date: 2007The thesis focuses on model-based approximation methods for reinforcement\ud le...
We describe the Fourier Basis, a linear value function approximation scheme based on the Fourier Ser...
Solving reinforcement learning problems using value function approximation requires having g...
Reinforcement learning is a general computational framework for learning sequential decision strate...
We address the problem of automatically constructing basis functions for linear approxim...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
In this master thesis, we have tried to solve two of most prominent Reinforcement Learning problems:...
In many practical reinforcement learning problems, the state space is too large to permit an exact r...
Reinforcement learning algorithms hold promise in many complex domains, such as resource management ...
Discretization based approaches to solving online reinforcement learning problems have been studied ...
Reinforcement Learning (RL) is currently an active research area of Artificial Intelligence (AI) in ...
A thesis submitted to the Faculty of Science, School of Computational and Applied Mathematics Univer...
Feature reinforcement learning was introduced five years ago as a principled and practical approach ...
textIn reinforcement learning, an autonomous agent seeks an effective control policy for tackling a...
Reinforcement learning deals with the problem of sequential decision making in uncertain stochastic ...
Graduation date: 2007The thesis focuses on model-based approximation methods for reinforcement\ud le...
We describe the Fourier Basis, a linear value function approximation scheme based on the Fourier Ser...
Solving reinforcement learning problems using value function approximation requires having g...
Reinforcement learning is a general computational framework for learning sequential decision strate...
We address the problem of automatically constructing basis functions for linear approxim...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
In this master thesis, we have tried to solve two of most prominent Reinforcement Learning problems:...
In many practical reinforcement learning problems, the state space is too large to permit an exact r...
Reinforcement learning algorithms hold promise in many complex domains, such as resource management ...
Discretization based approaches to solving online reinforcement learning problems have been studied ...
Reinforcement Learning (RL) is currently an active research area of Artificial Intelligence (AI) in ...