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Unsupervised Learning (Foundations of Neural Computation)
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Product Details
Author:
Geoffrey Hinton, Terrence J. Sejnowski
Series:
Computational Neuroscience Series
Format:
Paperback
Pages:
418
Publisher:
MIT Press (May 24, 1999)
Language:
English
ISBN-13:
9780262581684
ISBN-10:
026258168X
Weight:
13oz
Dimensions:
6" x 9"
Case Pack:
24
File:
RandomHouse-PRH_Book_Company_PRH_PRT_Onix_full_active_D20260405T170603_155746829-20260405.xml
Folder:
RandomHouse
List Price:
$50.00
As low as:
$38.50
Publisher Identifier:
P-RH
Discount Code:
A
QuickShip:
Yes
Audience:
General/trade
Country of Origin:
United States
Pub Discount:
65
Imprint:
Bradford Books
Overview
Since its founding in 1989 by Terrence Sejnowski, Neural Computation has become the leading journal in the field. Foundations of Neural Computation collects, by topic, the most significant papers that have appeared in the journal over the past nine years. This volume of Foundations of Neural Computation, on unsupervised learning algorithms, focuses on neural network learning algorithms that do not require an explicit teacher. The goal of unsupervised learning is to extract an efficient internal representation of the statistical structure implicit in the inputs. These algorithms provide insights into the development of the cerebral cortex and implicit learning in humans. They are also of interest to engineers working in areas such as computer vision and speech recognition who seek efficient representations of raw input data.








