Adaptive Representations for Reinforcement Learning
Title | Adaptive Representations for Reinforcement Learning PDF eBook |
Author | Shimon Whiteson |
Publisher | Springer |
Pages | 127 |
Release | 2010-07-10 |
Genre | Technology & Engineering |
ISBN | 3642139329 |
This book presents new algorithms for reinforcement learning, a form of machine learning in which an autonomous agent seeks a control policy for a sequential decision task. Since current methods typically rely on manually designed solution representations, agents that automatically adapt their own representations have the potential to dramatically improve performance. This book introduces two novel approaches for automatically discovering high-performing representations. The first approach synthesizes temporal difference methods, the traditional approach to reinforcement learning, with evolutionary methods, which can learn representations for a broad class of optimization problems. This synthesis is accomplished by customizing evolutionary methods to the on-line nature of reinforcement learning and using them to evolve representations for value function approximators. The second approach automatically learns representations based on piecewise-constant approximations of value functions. It begins with coarse representations and gradually refines them during learning, analyzing the current policy and value function to deduce the best refinements. This book also introduces a novel method for devising input representations. This method addresses the feature selection problem by extending an algorithm that evolves the topology and weights of neural networks such that it evolves their inputs too. In addition to introducing these new methods, this book presents extensive empirical results in multiple domains demonstrating that these techniques can substantially improve performance over methods with manual representations.
Adaptive Representations for Reinforcement Learning
Title | Adaptive Representations for Reinforcement Learning PDF eBook |
Author | Shimon Azariah Whiteson |
Publisher | |
Pages | 177 |
Release | 2007 |
Genre | |
ISBN | 9780549070825 |
In addition to introducing these new methods, this thesis presents extensive empirical results in multiple domains demonstrating that these techniques can substantially improve performance over methods with manual representations.
Adaptive Representations for Reinforcement Learning
Title | Adaptive Representations for Reinforcement Learning PDF eBook |
Author | Simon Whiteson |
Publisher | Springer Science & Business Media |
Pages | 127 |
Release | 2010-10-05 |
Genre | Computers |
ISBN | 3642139310 |
This book presents new algorithms for reinforcement learning, a form of machine learning in which an autonomous agent seeks a control policy for a sequential decision task. Since current methods typically rely on manually designed solution representations, agents that automatically adapt their own representations have the potential to dramatically improve performance. This book introduces two novel approaches for automatically discovering high-performing representations. The first approach synthesizes temporal difference methods, the traditional approach to reinforcement learning, with evolutionary methods, which can learn representations for a broad class of optimization problems. This synthesis is accomplished by customizing evolutionary methods to the on-line nature of reinforcement learning and using them to evolve representations for value function approximators. The second approach automatically learns representations based on piecewise-constant approximations of value functions. It begins with coarse representations and gradually refines them during learning, analyzing the current policy and value function to deduce the best refinements. This book also introduces a novel method for devising input representations. This method addresses the feature selection problem by extending an algorithm that evolves the topology and weights of neural networks such that it evolves their inputs too. In addition to introducing these new methods, this book presents extensive empirical results in multiple domains demonstrating that these techniques can substantially improve performance over methods with manual representations.
Adaptive Representation for Policy Gradient
Title | Adaptive Representation for Policy Gradient PDF eBook |
Author | Ujjwal Das Gupta |
Publisher | |
Pages | 40 |
Release | 2015 |
Genre | Algorithms |
ISBN |
Much of the focus on finding good representations in reinforcement learning has been on learning complex non-linear predictors of value. Methods like policy gradient, that do not learn a value function and instead directly represent policy, often need fewer parameters to learn good policies. However, they typically employ a fixed parametric representation that may not be sufficient for complex domains. This thesis introduces two algorithms which can learn an adaptive representation of policy: the Policy Tree algorithm, which learns a decision tree over different instantiations of a base policy, and the Policy Conjunction algorithm, which adds conjunctive features to any base policy that uses a linear feature representation. In both of these algorithms, policy gradient is used to grow the representation in a way that enables the maximum local increase in the expected return of the policy. Experiments show that these algorithms can choose genuinely helpful splits or features, and significantly improve upon the commonly used linear Gibbs softmax policy, which is chosen as the base policy.
The Logic of Adaptive Behavior
Title | The Logic of Adaptive Behavior PDF eBook |
Author | Martijn van Otterlo |
Publisher | IOS Press |
Pages | 508 |
Release | 2009 |
Genre | Business & Economics |
ISBN | 1586039695 |
Markov decision processes have become the de facto standard in modeling and solving sequential decision making problems under uncertainty. This book studies lifting Markov decision processes, reinforcement learning and dynamic programming to the first-order (or, relational) setting.
Reinforcement Learning
Title | Reinforcement Learning PDF eBook |
Author | Marco Wiering |
Publisher | Springer Science & Business Media |
Pages | 653 |
Release | 2012-03-05 |
Genre | Technology & Engineering |
ISBN | 3642276458 |
Reinforcement learning encompasses both a science of adaptive behavior of rational beings in uncertain environments and a computational methodology for finding optimal behaviors for challenging problems in control, optimization and adaptive behavior of intelligent agents. As a field, reinforcement learning has progressed tremendously in the past decade. The main goal of this book is to present an up-to-date series of survey articles on the main contemporary sub-fields of reinforcement learning. This includes surveys on partially observable environments, hierarchical task decompositions, relational knowledge representation and predictive state representations. Furthermore, topics such as transfer, evolutionary methods and continuous spaces in reinforcement learning are surveyed. In addition, several chapters review reinforcement learning methods in robotics, in games, and in computational neuroscience. In total seventeen different subfields are presented by mostly young experts in those areas, and together they truly represent a state-of-the-art of current reinforcement learning research. Marco Wiering works at the artificial intelligence department of the University of Groningen in the Netherlands. He has published extensively on various reinforcement learning topics. Martijn van Otterlo works in the cognitive artificial intelligence group at the Radboud University Nijmegen in The Netherlands. He has mainly focused on expressive knowledge representation in reinforcement learning settings.
Theoretical and Practical Advances in Computer-based Educational Measurement
Title | Theoretical and Practical Advances in Computer-based Educational Measurement PDF eBook |
Author | Bernard P. Veldkamp |
Publisher | Springer |
Pages | 399 |
Release | 2019-07-05 |
Genre | Education |
ISBN | 3030184803 |
This open access book presents a large number of innovations in the world of operational testing. It brings together different but related areas and provides insight in their possibilities, their advantages and drawbacks. The book not only addresses improvements in the quality of educational measurement, innovations in (inter)national large scale assessments, but also several advances in psychometrics and improvements in computerized adaptive testing, and it also offers examples on the impact of new technology in assessment. Due to its nature, the book will appeal to a broad audience within the educational measurement community. It contributes to both theoretical knowledge and also pays attention to practical implementation of innovations in testing technology.