Computational Learning Theory and Natural Learning Systems: Intersections between theory and experiment

Computational Learning Theory and Natural Learning Systems: Intersections between theory and experiment
Author :
Publisher : Mit Press
Total Pages : 449
Release :
ISBN-10 : 0262581337
ISBN-13 : 9780262581332
Rating : 4/5 (332 Downloads)

Book Synopsis Computational Learning Theory and Natural Learning Systems: Intersections between theory and experiment by : Stephen José Hanson

Download or read book Computational Learning Theory and Natural Learning Systems: Intersections between theory and experiment written by Stephen José Hanson and published by Mit Press. This book was released on 1994 with total page 449 pages. Available in PDF, EPUB and Kindle. Book excerpt: Annotation These original contributions converge on an exciting and fruitful intersection of three historically distinct areas of learning research: computational learning theory, neural networks, and symbolic machine learning. Bridging theory and practice, computer science and psychology, they consider general issues in learning systems that could provide constraints for theory and at the same time interpret theoretical results in the context of experiments with actual learning systems. In all, nineteen chapters address questions such as, What is a natural system? How should learning systems gain from prior knowledge? If prior knowledge is important, how can we quantify how important? What makes a learning problem hard? How are neural networks and symbolic machine learning approaches similar? Is there a fundamental difference in the kind of task a neural network can easily solve as opposed to those a symbolic algorithm can easily solve? Stephen J. Hanson heads the Learning Systems Department at Siemens Corporate Research and is a Visiting Member of the Research Staff and Research Collaborator at the Cognitive Science Laboratory at Princeton University. George A. Drastal is Senior Research Scientist at Siemens Corporate Research. Ronald J. Rivest is Professor of Computer Science and Associate Director of the Laboratory for Computer Science at the Massachusetts Institute of Technology.


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