Corpus Analysis Tools for Computational Hook Discovery

Publication date

2015

Authors

Van Balen, J.M.H.ISNI 0000000419527523
Burgoyne, J. Ashley
Bountouridis, D.ISNI 0000000492529429
Müllensiefen, Daniel
Veltkamp, Remco CISNI 0000000109665680

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DOI

Document Type

Contribution to conference
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Abstract

Compared to studies with symbolic music data, advances in music description from audio have overwhelmingly focused on ground truth reconstruction and maximizing prediction accuracy, with only a small fraction of studies using audio description to gain insight into musical data. We present a strategy for the corpus analysis of audio data that is optimized for interpretable results. The approach brings two previously unexplored concepts to the audio domain: audio bigram distributions, and the use of corpus-relative or 'second-order' descriptors. To test the real-world applicability of our method, we present an experiment in which we model song recognition data collected in a widely-played music game. By using the proposed corpus analysis pipeline we are able to present a cognitively adequate analysis that allows a model interpretation in terms of the listening history and experience of our participants. We find that our corpus-based audio features are able to explain a comparable amount of variance to symbolic features for this task when used alone and that they can supplement symbolic features profitably when the two types of features are used in tandem. Finally, we highlight new insights into what makes music recognizable.

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Citation

Van Balen, J M H, Burgoyne, J A, Bountouridis, D, Müllensiefen, D & Veltkamp, R C 2015, 'Corpus Analysis Tools for Computational Hook Discovery', Paper presented at International Society for Music Information Retrieval Conference, Taipei, Taiwan, Province of China, 27/10/14 - 31/10/14., conference