High-level feature descriptors and corpus-based musicology: Techniques for modelling music cognition

Müllensiefen, Daniel; Wiggins, Geraint and Lewis, Martin. 2008. High-level feature descriptors and corpus-based musicology: Techniques for modelling music cognition. In: Albrecht Schneider, ed. Systematic and Comparative Musicology: Concepts, Methods, Findings. 24 Frankfurt am Main: Peter Lang, pp. 133-155. ISBN 978-3-631-57953-4 [Book Section]

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Abstract or Description

In recent years large electronic collections of music in a symbolically-encoded form have been made available. They have enabled music researchers to develop and test precise empirical theories of music on large data sets. Both the availability of music data and the development of new empirical theories creates a new perspective for Systematic Musicology, which, as a discipline, often sets out to explain or describe music through the induction of empirical laws, regularities or statistical correlations in relation to music objects or music related behaviour (see e.g. Karbusicky, 1979; Karbusicky & Schneider, 1980; Schneider, 1993; Huron, 1999; Parncutt, 2007). We present two methodological frameworks, feature-extraction and corpus-based musicology, which are the core approaches of a particular research project, M4S, whose aim is to discover mechanisms of music cognition. These two frameworks are also very useful for many other empirical tasks in Systematic Musicology.

Item Type:

Book Section

Departments, Centres and Research Units:

Psychology

Dates:

DateEvent
2008Published

Item ID:

5394

Date Deposited:

28 Mar 2011 10:54

Last Modified:

29 Apr 2020 15:30

URI:

https://research.gold.ac.uk/id/eprint/5394

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