Book contents
- Frontmatter
- Contents
- Acknowledgements
- List of contributors
- Foreword
- 1 Introduction
- 2 On-line Learning and Stochastic Approximations
- 3 Exact and Perturbation Solutions for the Ensemble Dynamics
- 4 A Statistical Study of On-line Learning
- 5 On-line Learning in Switching and Drifting Environments with Application to Blind Source Separation
- 6 Parameter Adaptation in Stochastic Optimization
- 7 Optimal On-line Learning in Multilayer Neural Networks
- 8 Universal Asymptotics in Committee Machines with Tree Architecture
- 9 Incorporating Curvature Information into On-line Learning
- 10 Annealed On-line Learning in Multilayer Neural Networks
- 11 On-line Learning of Prototypes and Principal Components
- 12 On-line Learning with Time-Correlated Examples
- 13 On-line Learning from Finite Training Sets
- 14 Dynamics of Supervised Learning with Restricted Training Sets
- 15 On-line Learning of a Decision Boundary with and without Queries
- 16 A Bayesian Approach to On-line Learning
- 17 Optimal Perceptron Learning: an On-line Bayesian Approach
List of contributors
Published online by Cambridge University Press: 28 January 2010
- Frontmatter
- Contents
- Acknowledgements
- List of contributors
- Foreword
- 1 Introduction
- 2 On-line Learning and Stochastic Approximations
- 3 Exact and Perturbation Solutions for the Ensemble Dynamics
- 4 A Statistical Study of On-line Learning
- 5 On-line Learning in Switching and Drifting Environments with Application to Blind Source Separation
- 6 Parameter Adaptation in Stochastic Optimization
- 7 Optimal On-line Learning in Multilayer Neural Networks
- 8 Universal Asymptotics in Committee Machines with Tree Architecture
- 9 Incorporating Curvature Information into On-line Learning
- 10 Annealed On-line Learning in Multilayer Neural Networks
- 11 On-line Learning of Prototypes and Principal Components
- 12 On-line Learning with Time-Correlated Examples
- 13 On-line Learning from Finite Training Sets
- 14 Dynamics of Supervised Learning with Restricted Training Sets
- 15 On-line Learning of a Decision Boundary with and without Queries
- 16 A Bayesian Approach to On-line Learning
- 17 Optimal Perceptron Learning: an On-line Bayesian Approach
Summary
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- Chapter
- Information
- On-Line Learning in Neural Networks , pp. ix - xPublisher: Cambridge University PressPrint publication year: 1999