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Painfree and accurate Bayesian estimation of psychometric functions for (potentially) overdispersed data

  • The psychometric function describes how an experimental variable, such as stimulus strength, influences the behaviour of an observer. Estimation of psychometric functions from experimental data plays a central role in fields such as psychophysics, experimental psychology and in the behavioural neurosciences. Experimental data may exhibit substantial overdispersion, which may result from non-stationarity in the behaviour of observers. Here we extend the standard binomial model which is typically used for psychometric function estimation to a beta-binomial model. We show that the use of the beta-binomial model makes it possible to determine accurate credible intervals even in data which exhibit substantial overdispersion. This goes beyond classical measures for overdispersion goodness-of-fit which can detect overdispersion but provide no method to do correct inference for overdispersed data. We use Bayesian inference methods for estimating the posterior distribution of the parameters of the psychometric function. Unlike previousThe psychometric function describes how an experimental variable, such as stimulus strength, influences the behaviour of an observer. Estimation of psychometric functions from experimental data plays a central role in fields such as psychophysics, experimental psychology and in the behavioural neurosciences. Experimental data may exhibit substantial overdispersion, which may result from non-stationarity in the behaviour of observers. Here we extend the standard binomial model which is typically used for psychometric function estimation to a beta-binomial model. We show that the use of the beta-binomial model makes it possible to determine accurate credible intervals even in data which exhibit substantial overdispersion. This goes beyond classical measures for overdispersion goodness-of-fit which can detect overdispersion but provide no method to do correct inference for overdispersed data. We use Bayesian inference methods for estimating the posterior distribution of the parameters of the psychometric function. Unlike previous Bayesian psychometric inference methods our software implementation-psignifit 4 performs numerical integration of the posterior within automatically determined bounds. This avoids the use of Markov chain Monte Carlo (MCMC) methods typically requiring expert knowledge. Extensive numerical tests show the validity of the approach and we discuss implications of overdispersion for experimental design. A comprehensive MATLAB toolbox implementing the method is freely available; a python implementation providing the basic capabilities is also available. (C) 2016 The Authors. Published by Elsevier Ltd.show moreshow less

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Metadaten
Author details:Heiko Herbert SchüttORCiDGND, Stefan Harmeling, Jakob H. Macke, Felix A. WichmannORCiD
DOI:https://doi.org/10.1016/j.visres.2016.02.002
ISSN:0042-6989
ISSN:1878-5646
Pubmed ID:https://pubmed.ncbi.nlm.nih.gov/27013261
Title of parent work (English):Vision research : an international journal for functional aspects of vision.
Publisher:Elsevier
Place of publishing:Oxford
Publication type:Article
Language:English
Year of first publication:2016
Publication year:2016
Release date:2020/03/22
Tag:Bayesian inference; Beta-binomial model; Confidence intervals; Credible intervals; Non-stationarity; Overdispersion; Psychometric function; Psychophysical methods
Volume:122
Number of pages:19
First page:105
Last Page:123
Peer review:Referiert
Institution name at the time of the publication:Humanwissenschaftliche Fakultät / Exzellenzbereich Kognitionswissenschaften
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