384 Pages 64 B/W Illustrations
    by CRC Press

    The research area of music information retrieval has gradually evolved to address the challenges of effectively accessing and interacting large collections of music and associated data, such as styles, artists, lyrics, and reviews. Bringing together an interdisciplinary array of top researchers, Music Data Mining presents a variety of approaches to successfully employ data mining techniques for the purpose of music processing.

    The book first covers music data mining tasks and algorithms and audio feature extraction, providing a framework for subsequent chapters. With a focus on data classification, it then describes a computational approach inspired by human auditory perception and examines instrument recognition, the effects of music on moods and emotions, and the connections between power laws and music aesthetics. Given the importance of social aspects in understanding music, the text addresses the use of the Web and peer-to-peer networks for both music data mining and evaluating music mining tasks and algorithms. It also discusses indexing with tags and explains how data can be collected using online human computation games. The final chapters offer a balanced exploration of hit song science as well as a look at symbolic musicology and data mining.

    The multifaceted nature of music information often requires algorithms and systems using sophisticated signal processing and machine learning techniques to better extract useful information. An excellent introduction to the field, this volume presents state-of-the-art techniques in music data mining and information retrieval to create novel ways of interacting with large music collections.

    FUNDAMENTAL TOPICS
    Music Data Mining: An Introduction, Tao Li and Lei Li
    Audio Feature Extraction, George Tzanetakis

    CLASSIFICATION
    Auditory Sparse Coding, Steven R. Ness, Thomas C. Walters, and Richard F. Lyon
    Instrument Recognition, Jayme Garcia Arnal Barbedo
    Mood and Emotional Classification, Mitsunori Ogihara and Youngmoo Kim
    Zipf’s Law, Power Laws, and Music Aesthetics, Bill Manaris, Patrick Roos, Dwight Krehbiel, Thomas Zalonis, and J.R. Armstrong

    SOCIAL ASPECTS OF MUSIC DATA MINING
    Web- and Community-Based Music Information Extraction, Markus Schedl
    Indexing Music with Tags, Douglas Turnbull
    Human Computation for Music Classification, Edith Law

    ADVANCED TOPICS
    Hit Song Science, Francois Pachet
    Symbolic Data Mining in Musicology, Ian Knopke and Frauke Jurgensen

    Index

    Biography

    Tao Li, Mitsunori Ogihara, George Tzanetakis

    "… a useful survey for the reader specifically interested in MIR."
    Statistical Papers (2013) 54

    "This book, as a collection of papers, brings together some of the leading scholars of the field to tackle a number of data mining techniques aiming mainly at data classification."
    —Joonas Kauppinen, International Statistical Review, 2012