๐”– Scriptorium
โœฆ   LIBER   โœฆ

๐Ÿ“

Concept Formation. Knowledge and Experience in Unsupervised Learning


Publisher
Elsevier Inc
Year
1991
Tongue
English
Leaves
470
Category
Library

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โœฆ Table of Contents


Content:
The Morgan Kaufmann Series in Machine Learning, Page ii
Front Matter, Page iii
Copyright, Page iv
Dedication, Page v
Preface, Pages ix-xiii, DOUG FISHER, MICHAEL PAZZANI, PAT LANGLEY
Contributors, Pages xv-xvi
CHAPTER 1 - Computational Models of Concept Learning, Pages 3-43, DOUG FISHER, MICHAEL PAZZANI
CHAPTER 2 - An Incremental Bayesian Algorithm for Categorization, Pages 45-70, JOHN R. ANDERSON, MICHAEL MATESSA
CHAPTER 3 - Representational Specificity and Concept Learning, Pages 71-102, JOEL D. MARTIN, DORRIT BILLMAN
CHAPTER 4 - Discrimination Net Models of Concept Formation, Pages 103-125, HOWARD B. RICHMAN
CHAPTER 5 - Concept Formation in Structured Domains, Pages 127-161, KEVIN THOMPSON, PAT LANGLEY
CHAPTER 6 - Theory-Guided Concept Formation, Pages 165-177, DOUG FISHER, MICHAEL PAZZANI
CHAPTER 7 - Explanation-Based Learning as Concept Formation, Pages 179-205, RAYMOND J. MOONEY
CHAPTER 8 - Some Influences of Instance Comparisons on Concept Formation, Pages 207-236, BRIAN H. ROSS, THOMAS L. SPALDING
CHAPTER 9 - Harpoons and Long Sticks: The Interaction of Theory and Similarity in Rule Induction, Pages 237-278, EDWARD J. WISNIEWSKI, DOUGLAS L. MEDIN
CHAPTER 10 - Concept Formation over Problem-Solving Experience, Pages 279-303, JUNGSOON YOO, DOUG FISHER
CHAPTER 11 - Concept Formation in Context, Pages 307-322, DOUG FISHER, MICHAEL PAZZANI
CHAPTER 12 - The Formation and Use of Abstract Concepts in Design, Pages 323-353, YORAM REICH, STEVEN J. FENVES
CHAPTER 13 - Learning to Recognize Movements, Pages 355-386, WAYNE IBA, JOHN H. GENNARI
CHAPTER 14 - Representation Generation in an Exploratory Learning System, Pages 387-422, PAUL D. SCOTT, SHAUL MARKOVITCH
CHAPTER 15 - A Computational Account of Children's Learning About Number Conservation, Pages 423-462, TONY SIMON, ALLEN NEWELL, DAVID KLAHR
Index, Pages 463-472


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