رکورد قبلیرکورد بعدی

" Computational Models of Learning "


Document Type : BL
Record Number : 754377
Doc. No : b574339
Main Entry : edited by Leonard Bolc.
Title & Author : Computational Models of Learning\ edited by Leonard Bolc.
Publication Statement : Berlin, Heidelberg : Springer Berlin Heidelberg, 1987
Series Statement : Symbolic computation., Artificial intelligence.
Page. NO : (IX, 208 pages 34 illustrations)
ISBN : 3540163182
: : 364282742X
: : 3642827446
: : 9783540163183
: : 9783642827426
: : 9783642827440
Contents : R.S. Michalski: Learning Strategies and Automated Knowledge Acquisition: An Overview --; P. Langley, H.A. Simon, G.L. Bradshaw: Heuristics for Empirical Discovery --; S. Ohlsson: Transfer of Training in Procedural Learning: A Matter of Conjectures and Refutations?- L.A. Rendell: Conceptual Knowledge Acquisition in Search --; J.G. Wolff: Cognitive Development as Optimization --; Subject Index.
Abstract : In recent years, machine learning has emerged as a significant area of research in artificial intelligence and cognitive science. At present, research in the field is being intensified from both the point of view of theory and of implementation, and the results are being introduced in practice. Machine learning has recently become the subject of interest of many young and talented scientists whose bold ideas have greatly contributed to the broadening of knowledge in this rapidly developing field of science. This situation has manifested itself in an increasing number of valuable contributions to scientific journals. However, such papers are necessarily compact descriptions of research problems. Computational Models of Learning supplements these contributions and is a collection of more extensive essays. These essays provide the reader with an increased knowledge of carefully selected problems of machine learning.
Subject : Artificial intelligence.
Subject : Computer science.
LC Classification : ‭Q325‬‭.E358 1987‬
Added Entry : Leonard Bolc
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