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Machine Learning and Music Generation

List Price: $62.99
SKU:
9780367892852
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  • Product Details

    Author:
    José M. Iñesta, Darrell C. Conklin, Rafael Ramírez-Melendez, Thomas M. Fiore
    Format:
    Paperback
    Pages:
    122
    Publisher:
    CRC Press (December 18, 2019)
    Language:
    English
    ISBN-13:
    9780367892852
    Weight:
    8.125oz
    Dimensions:
    6.875" x 9.6875"
    File:
    TAYLORFRANCIS-TayFran_260409051915605-20260409.xml
    Folder:
    TAYLORFRANCIS
    List Price:
    $62.99
    Case Pack:
    1
    As low as:
    $59.84
    Publisher Identifier:
    P-CRC
    Discount Code:
    H
    Audience:
    College/higher education
    Country of Origin:
    United States
    Pub Discount:
    30
    Imprint:
    Routledge
  • Overview

    Computational approaches to music composition and style imitation have engaged musicians, music scholars, and computer scientists since the early days of computing. Music generation research has generally employed one of two strategies: knowledge-based methods that model style through explicitly formalized rules, and data mining methods that apply machine learning to induce statistical models of musical style. The five chapters in this book illustrate the range of tasks and design choices in current music generation research applying machine learning techniques and highlighting recurring research issues such as training data, music representation, candidate generation, and evaluation. The contributions focus on different aspects of modeling and generating music, including melody, chord sequences, ornamentation, and dynamics. Models are induced from audio data or symbolic data. This book was originally published as a special issue of the Journal of Mathematics and Music.