2011
DOI: 10.1037/a0024323
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Modeling the tendency for music to induce movement in humans: First correlations with low-level audio descriptors across music genres.

Abstract: Groove is often described as the experience of music that makes people tap their feet and want to dance. A high degree of consistency in ratings of groove across listeners indicates that physical properties of the sound signal contribute to groove (Madison, 2006). Here, correlations were assessed between listeners' ratings and a number of quantitative descriptors of rhythmic properties for one hundred music examples from five distinct traditional music genres. Groove was related to several different rhythmic p… Show more

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Cited by 133 publications
(235 citation statements)
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References 44 publications
(52 reference statements)
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“…Beat salience (a measure of rhythmic periodicity based on the autocorrelation function of the signal representing the velocities of event onsets) and event density (a measure of the variability in the event onset velocity signal) have been identified as the best predictors of perceived groove across a range of genres (Madison et al, 2011). However, when calculated using the Music Information Retrieval Toolbox (MIR Toolbox) for MATLAB (Lartillot & Toiviainen, 2007), event density failed to predict groove ratings (Stupacher et al, 2013).…”
Section: Audio Features Of Groovementioning
confidence: 99%
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“…Beat salience (a measure of rhythmic periodicity based on the autocorrelation function of the signal representing the velocities of event onsets) and event density (a measure of the variability in the event onset velocity signal) have been identified as the best predictors of perceived groove across a range of genres (Madison et al, 2011). However, when calculated using the Music Information Retrieval Toolbox (MIR Toolbox) for MATLAB (Lartillot & Toiviainen, 2007), event density failed to predict groove ratings (Stupacher et al, 2013).…”
Section: Audio Features Of Groovementioning
confidence: 99%
“…In the first of three studies, we tested the hypothesis that spectral features not only predict movement qualities (as shown by previous studies), but also groove ratings, and we investigated the relationships between different measures of event density (MIR event density & Madison et al, 2011) and rhythmic salience (MIR pulse clarity & Madison et al, 2011). Since musicians use short notes to induce groove , we additionally extracted the attack characteristics of the music stimuli, expecting that fast attack times would be associated with higher groove ratings.…”
Section: Audio Features Of Groovementioning
confidence: 99%
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“…The latter was confirmed by a systematic analysis conducted by Davies, Madison, Silva, & Gouyon (2013) on simple rhythms. Madison et al (2011) claim that tempo alone cannot explain groove. However, Janata, Tomic, & Haberman (2012) conducted an extensive study on sensorimotor coupling, where the computational part of the analysis suggests that music genre and faster tempi have a strong effect on the desire to move along to the music.…”
Section: Groove In the Literaturementioning
confidence: 99%