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Deep Learning Generalization (Theoretical Foundations and Practical Strategies)

List Price: $68.99
SKU:
9781032841892
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  • Product Details

    Author:
    Liu Peng
    Format:
    Paperback
    Pages:
    230
    Publisher:
    CRC Press (September 11, 2025)
    Language:
    English
    Audience:
    College/higher education
    ISBN-13:
    9781032841892
    Dimensions:
    6.125" x 9.1875"
    File:
    TAYLORFRANCIS-TayFran_260107055151746-20260107.xml
    Folder:
    TAYLORFRANCIS
    List Price:
    $68.99
    Country of Origin:
    United States
    Pub Discount:
    30
    As low as:
    $65.54
    Publisher Identifier:
    P-CRC
    Discount Code:
    H
    Imprint:
    Chapman and Hall/CRC
    Weight:
    15.125oz
  • Overview

    This book provides a comprehensive exploration of generalization in deep learning, focusing on both theoretical foundations and practical strategies. It delves deeply into how machine learning models, particularly deep neural networks, achieve robust performance on unseen data.