2017
DOI: 10.3758/s13414-017-1460-0
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Bayesian active probabilistic classification for psychometric field estimation

Abstract: Psychometric functions are typically estimated by fitting a parametric model to categorical subject responses. Procedures to estimate unidimensional psychometric functions (i.e., psychometric curves) have been subjected to the most research, with modern adaptive methods capable of quickly obtaining accurate estimates. These capabilities have been extended to some multidimensional psychometric functions (i.e., psychometric fields) that are easily parameterizable, but flexible procedures for general psychometric… Show more

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Cited by 21 publications
(46 citation statements)
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References 51 publications
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“…This method can rapidly identify a class boundary for a target function of interest, but because uncertainty sampling attempts to query exactly where p(y = 1|x) = 0.5 (in the binary case), the model underexplores the input space. In the context of psychometric fields, the transition from one class to another (i.e., the psychometric spread) is not as readily estimated in this case (Song et al, 2018).…”
Section: Theorymentioning
confidence: 99%
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“…This method can rapidly identify a class boundary for a target function of interest, but because uncertainty sampling attempts to query exactly where p(y = 1|x) = 0.5 (in the binary case), the model underexplores the input space. In the context of psychometric fields, the transition from one class to another (i.e., the psychometric spread) is not as readily estimated in this case (Song et al, 2018).…”
Section: Theorymentioning
confidence: 99%
“…Three different pairings of ground-truth audiograms (normal-normal, normal-pathologic, and pathologic-pathologic) therefore reflect conditions with varying putative estimation benefit from considering both ears conjointly. These canonical audiogram phenotypes have been used previously to evaluate the accuracy (Song et al, 2017) and efficiency (Song et al, 2018) of disjoint machine-learning audiometry.…”
Section: Simulated Subjectsmentioning
confidence: 99%
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