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Foundations of knowledge acquisition

Foundations of knowledge acquisition (2회 대출)

자료유형
단행본
개인저자
Meyrowitz, Alan Lester. Chipman, Susan F.
서명 / 저자사항
Foundations of knowledge acquisition / edited by Susan Chipman, Alan L. Meyrowitz.
발행사항
Boston :   Kluwer Academic Publishers ,   c1993.  
형태사항
2 v. : ill. ; 25 cm.
총서사항
The Kluwer international series in engineering and computer science ; SECS 194-195.
ISBN
0792392787 (v. 2 : acid-free paper) 0792392779 (v. 1 : acid-free paper)
내용주기
[1]. Cognitive models of complex learning. 336 p. -- [2]. Machine learning. 334 p.
서지주기
Includes bibliographical references and indexes.
일반주제명
Knowledge acquisition (Expert systems).
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245 0 0 ▼a Foundations of knowledge acquisition / ▼c edited by Susan Chipman, Alan L. Meyrowitz.
260 ▼a Boston : ▼b Kluwer Academic Publishers , ▼c c1993.
300 ▼a 2 v. : ▼b ill. ; ▼c 25 cm.
440 4 ▼a The Kluwer international series in engineering and computer science ; ▼v SECS 194-195.
504 ▼a Includes bibliographical references and indexes.
505 0 ▼a [1]. Cognitive models of complex learning. 336 p. -- [2]. Machine learning. 334 p.
650 0 ▼a Knowledge acquisition (Expert systems).
700 1 0 ▼a Meyrowitz, Alan Lester.
700 1 0 ▼a Chipman, Susan F.

소장정보

No. 소장처 청구기호 등록번호 도서상태 반납예정일 예약 서비스
No. 1 소장처 학술정보관(CDL)/B1 국제기구자료실(보존서고8)/ 청구기호 006.3 F771 1 등록번호 111023398 (1회 대출) 도서상태 대출가능 반납예정일 예약 서비스 B M
No. 2 소장처 학술정보관(CDL)/B1 국제기구자료실(보존서고8)/ 청구기호 006.3 F771 2 등록번호 111023401 (1회 대출) 도서상태 대출가능 반납예정일 예약 서비스 B M

컨텐츠정보

책소개

One of the most intriguing questions about the new computer technology that has appeared over the past few decades is whether we humans will ever be able to make computers learn. As is painfully obvious to even the most casual computer user, most current computers do not. Yet if we could devise learning techniques that enable computers to routinely improve their performance through experience, the impact would be enormous. The result would be an explosion of new computer applications that would suddenly become economically feasible (e. g. , personalized computer assistants that automatically tune themselves to the needs of individual users), and a dramatic improvement in the quality of current computer applications (e. g. , imagine an airline scheduling program that improves its scheduling method based on analyzing past delays). And while the potential economic impact of successful learning methods is sufficient reason to invest in research into machine learning, there is a second significant reason: studying machine learning helps us understand our own human learning abilities and disabilities, leading to the possibility of improved methods in education. While many open questions remain about the methods by which machines and humans might learn, significant progress has been made.

One of the most intriguing questions about the new computer technology that has appeared over the past few decades is whether we humans will ever be able to make computers learn. As is painfully obvious to even the most casual computer user, most current computers do not. Yet if we could devise learning techniques that enable computers to routinely improve their performance through experience, the impact would be enormous. The result would be an explosion of new computer applications that would suddenly become economically feasible (e. g. , personalized computer assistants that automatically tune themselves to the needs of individual users), and a dramatic improvement in the quality of current computer applications (e. g. , imagine an airline scheduling program that improves its scheduling method based on analyzing past delays). And while the potential economic impact of successful learning methods is sufficient reason to invest in research into machine learning, there is a second significant reason: studying machine learning helps us understand our own human learning abilities and disabilities, leading to the possibility of improved methods in education. While many open questions remain about the methods by which machines and humans might learn, significant progress has been made.


정보제공 : Aladin

목차


CONTENTS
Foreword = ⅶ
Preface = ⅸ
1. Acquistion of LISP Programming Skill / John R. Anderson ; Albert T. Corbett = 1
2. Learning by Explaining Examples to Oneself : A Computational Model / Kurt VanLehn ; Randolph M. Jones = 25
3. Learning Schemas from Explanations in Practical Electronics / David E. Kieras = 83
4. Statistical and Cognitive Models of Learning Through Instruction / Sandra P. Marshall = 119
5. The Interaction between Knowledge and Practice in the Acquistion of Cognitive Skills / Stellan Ohlsson = 147
6. Correcting Imperfect Domain Theories : A Knowledge-Level Analysis / Scott . Huffman ; Douglas J. Pearson ; John E. Laird = 209
7. A Cognitive Science Approach to Case-Based Planning / Kristian J. Hammond ; Colleen M. Seifert = 245
8. Bias in Planning and Explanation-Based Learning / Paul S. Rosenbloom ; Soowon Lee ; Amy Unruh = 269
9. Knowledge Acquisition and Natural Language Processing / Robert Wilensky = 309


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