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Subspace Learning of Neural Networks

List Price: $68.99
SKU:
9781138112681
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  • Product Details

    Author:
    Jian Cheng Lv, Zhang Yi, Jiliu Zhou
    Format:
    Paperback
    Pages:
    256
    Publisher:
    CRC Press (June 14, 2017)
    Language:
    English
    ISBN-13:
    9781138112681
    Weight:
    16.625oz
    Dimensions:
    6.125" x 9.1875"
    File:
    TAYLORFRANCIS-TayFran_260124055304008-20260124.xml
    Folder:
    TAYLORFRANCIS
    List Price:
    $68.99
    Country of Origin:
    United States
    Series:
    Automation and Control Engineering
    Case Pack:
    1
    As low as:
    $65.54
    Publisher Identifier:
    P-CRC
    Discount Code:
    H
    Pub Discount:
    30
    Imprint:
    CRC Press
  • Overview

    Using real-life examples to illustrate the performance of learning algorithms and instructing readers how to apply them to practical applications, this work offers a comprehensive treatment of subspace learning algorithms for neural networks. The authors summarize a decade of high quality research offering a host of practical applications. They demonstrate ways to extend the use of algorithms to fields such as encryption communication, data mining, computer vision, and signal and image processing to name just a few. The brilliance of the work lies with how it coherently builds a theoretical understanding of the convergence behavior of subspace learning algorithms through a summary of chaotic behaviors.