
- 554 pages
- English
- PDF
- Available on iOS & Android
Machine Learning Methods for Planning
About this book
Machine Learning Methods for Planning provides information pertinent to learning methods for planning and scheduling. This book covers a wide variety of learning methods and learning architectures, including analogical, case-based, decision-tree, explanation-based, and reinforcement learning. Organized into 15 chapters, this book begins with an overview of planning and scheduling and describes some representative learning systems that have been developed for these tasks. This text then describes a learning apprentice for calendar management. Other chapters consider the problem of temporal credit assignment and describe tractable classes of problems for which optimal plans can be derived. This book discusses as well how reactive, integrated systems give rise to new requirements and opportunities for machine learning. The final chapter deals with a method for learning problem decompositions, which is based on an idealized model of efficiency for problem-reduction search. This book is a valuable resource for production managers, planners, scientists, and research workers.
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Information
Table of contents
- Front Cover
- Machine Learning Methods for Planning
- Copyright Page
- Table of Contents
- Contributors
- Preface
- CHAPTER 1. Learning, Planning, and Scheduling: An Overview
- CHAPTER 2. Interfaces That Learn: A Learning Apprentice for Calendar Management
- CHAPTER 3. Reinforcement Learning for Planning and Control
- CHAPTER 4. A First Theory of Plausible Inference and Its Use in Continuous Domain Planning
- CHAPTER 5. Planning, Acting, and Learning in a Dynamic Domain
- CHAPTER 6. Reactive, Integrated Systems Pose New Problems for Machine Learning
- CHAPTER 7. Bias in Planning and Explanation-Based Learning
- CHAPTER 8. Toward Scaling Up Machine Learning: A Case Study with Derivational Analogy in PRODIGY
- CHAPTER 9. Integration of Analogical Search Control and Explanation-Based Learning of Correctness
- CHAPTER 10. A Unified Framework for Planning and Learning
- CHAPTER 11. Toward a Theory of Agency
- CHAPTER 12. Supporting Flexible Plan Reuse
- CHAPTER 13. Adapting Plan Architectures
- CHAPTER 14. Learning Recurring Subplans
- CHAPTER 15. A Method for Biasing the Learning of Nonterminal Reduction Rules
- Index