Detectability of uneven rhythms

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Detectability of uneven rhythms H.H. Schulze Philipps Universität Marburg Fachbereich Psychologie

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Detectability of uneven rhythms. H.H. Schulze Philipps Universität Marburg Fachbereich Psychologie. Uneven rhythms. The metrum is not divided into equal temporal intervals Example: 3:4,4:5,6:7 In turkish music these rhythms are called limping rhythms (aslak). Questions. - PowerPoint PPT Presentation

Transcript of Detectability of uneven rhythms

Page 1: Detectability of uneven rhythms

Detectability of uneven rhythms

H.H. Schulze

Philipps Universität Marburg

Fachbereich Psychologie

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Uneven rhythms

• The metrum is not divided into equal temporal intervals

• Example: 3:4,4:5,6:7

• In turkish music these rhythms are called limping rhythms (aslak).

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Questions

• What is the threshold for detecting unevenness?

• How does it depend upon the period of the pulses and the length of the sequence?

• Does it depend upon the ear to which the sound is presented?

• Does it improve with training?

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Conditions

• Number of Periods (1,2,3,4)

• Ear (left,right)

• Period (200ms,300ms,400ms,500ms)

• Session(1,2)

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subjects

• 29 Subjects

• Psychology students

• 26 play an instrument

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Stimuli

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Method

• Two alternative forced-choice uneven vs even

• The five different periods were randomized from trial to trial

• The adaptive method of Kaernbach was used with five parallel staircases with random switching

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Kaernbachs adaptive Method

• Rule: After a correct response decrease level by 1 step

• after an incorrect response increase the level by 3 steps

• the procedure converges to a level with p-correct of .75

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Examples of individual data

• The following figures show the threshold of the detectability as a function of the number of periods for three subjects.

• Lines with the triangular symbol are for the first session.

• Lines with a circle symbol are for the second session.

• The color codes the ear condition.

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Individual Parameters

• Fitting a linerar model for the threshold function with period as a factor and nbeats as a covariate.

• The following figure shows the individual parameters and confidence intervals for all subjects.

• The intercept reflects the threshold for nperiod = 1• The coefficients of nbeats reflect the decrease of the

threshold with the number of periods presented.• The coefficients of period are for the dummy coded period

variable

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Mean data

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Mean data nbeats

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Period Effect

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Session effect

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Ear effect

left right

1.0

1.5

2.0

2.5

3.0

3.5

4.0

ear

nbeats

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Summary of statistical analysis

• Significant effects of period, number of beats and session

• No effect of ear

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Multiple look prediction for improvement

• The multiple look prediction of SDT is that the threshold is inverse proportional to the square root of the number of periods.

• Assumptions: 1. the internal observations in each event are

independent random variables

2. The detectability index is proportional to the relative shift of the uneven beat.

• Predictions for mean data are shown in

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Mean data and multiple look prediction

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Conclusions

• There is large interindividual variability for the thresholds of detectability.

• Webers law does not hold. The thresholds are lowest for the 500ms conditions.

• The ear to which the rhythms are presented does not have any effect on the discriminability of the stimuli.

• With training the sensitivity to unevenness can be improved

• The improvement with the number of periods presented is less than expected by a simple multiple look model of SDT in the mean data, but the estimation of individual parameters of the threshold function still has to be done.