The ability to learn from experience is a fundamental requirement for intelligence. One of the most basic characteristics of human intelligence is that people can learn from problem solving, so that they become more adept at solving problems in a given domain as they gain experience. This book investigates how computers may be programmed so that they too can learn from experience. Specifically, the aim is to take a very general, but inefficient, problem solving system and train it on a set of problems from a given domain, so that it can transform itself into a specialized, efficient problem solver for that domain. on a knowledge-intensive Recently there has been considerable progress made learning approach, explanation-based learning (EBL), that brings us closer to this possibility. As demonstrated in this book, EBL can be used to analyze a problem solving episode in order to acquire control knowledge. Control knowledge guides the problem solver's search by indicating the best alternatives to pursue at each choice point. An EBL system can produce domain specific control knowledge by explaining why the choices made during a problem solving episode were, or were not, appropriate.
Read More
Specifications
Book Details
Title
Learning Search Control Knowledge
Imprint
Springer-Verlag New York Inc.
Product Form
Paperback
Publisher
Springer-Verlag New York Inc.
Source ISBN
9781461289609
Genre
Computers
ISBN13
9781461289609
Book Category
Higher Education and Professional Books
BISAC Subject Heading
COM004000
Book Subcategory
Computing and Information Technology Books
ISBN10
9781461289609
Language
English
Dimensions
Height
235 mm
Length
155 mm
Weight
355 gr
Be the first to ask about this product
Safe and Secure Payments.Easy returns.100% Authentic products.