Guide to Neural Computing Applications (Enhanced Edition) Guide to Neural Computing Applications (Enhanced Edition)

Guide to Neural Computing Applications (Enhanced Edition‪)‬

    • $119.99
    • $119.99

Publisher Description

Neural networks have shown enormous potential for commercial exploitation over the last few years but it is easy to overestimate their capabilities. A few simple algorithms will learn relationships between cause and effect or organise large volumes of data into orderly and informative patterns but they cannot solve every problem and consequently their application must be chosen carefully and appropriately.

This book outlines how best to make use of neural networks. It enables newcomers to the technology to construct robust and meaningful non-linear models and classifiers and benefits the more experienced practitioner who, through over familiarity, might otherwise be inclined to jump to unwarranted conclusions. The book is an invaluable resource not only for those in industry who are interested in neural computing solutions, but also for final year undergraduates or graduate students who are working on neural computing projects. It provides advice which will help make the best use of the growing number of commercial and public domain neural network software products, freeing the specialist from dependence upon external consultants.

GENRE
Computers & Internet
RELEASED
1998
January 30
LANGUAGE
EN
English
LENGTH
160
Pages
PUBLISHER
Elsevier Science
SELLER
Elsevier Ltd.
SIZE
2
MB
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