Computational Learning Theory and Natural Learning Systems. Volume III Selecting Good Models

Computational Learning Theory and Natural Learning Systems. Volume III Selecting Good Models

Paperback (27 Apr 1995)

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Publisher's Synopsis

This is the third in a series of edited volumes exploring the evolving landscape of learning systems research which spans theory and experiment, symbols and signals. It continues the exploration of the synthesis of the machine learning subdisciplines begun in volumes I and II. The nineteen contributions cover learning theory, empirical comparisons of learning algorithms, the use of prior knowledge, probabilistic concepts, and the effect of variations over time in the concepts and feedback from the environment.

The goal of this series is to explore the intersection of three historically distinct areas of learning research: computational learning theory, neural networks andAI machine learning. Although each field has its own conferences, journals, language, research, results, and directions, there is a growing intersection and effort to bring these fields into closer coordination.

Can the various communities learn anything from one another? These volumes present research that should be of interest to practitioners of the various subdisciplines of machine learning, addressing questions that are of interest across the range of machine learning approaches, comparing various approaches on specific problems and expanding the theory to cover more realistic cases.

A Bradford Book

Book information

ISBN: 9780262660969
Publisher: The MIT Press
Imprint: The MIT Press
Pub date:
DEWEY: 006.31
DEWEY edition: 23
Number of pages: xxiii, 411
Weight: 817g
Height: 229mm
Width: 178mm
Spine width: 25mm