2018
DOI: 10.1167/18.8.12
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Bayesian adaptive stimulus selection for dissociating models of psychophysical data

Abstract: Comparing models facilitates testing different hypotheses regarding the computational basis of perception and action. Effective model comparison requires stimuli for which models make different predictions. Typically, experiments use a predetermined set of stimuli or sample stimuli randomly. Both methods have limitations; a predetermined set may not contain stimuli that dissociate the models, whereas random sampling may be inefficient. To overcome these limitations, we expanded the psi-algorithm (Kontsevich & … Show more

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Cited by 1 publication
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“…The present work suggests that by characterizing the sensory reweighting process first, one could promote selective training programs directed at optimizing selective weights of this process. However, it must also be clear that the presented approach can only become a clinical tool if we can reduce the number of trials needed to infer the model parameters, for example, by using adaptive stimulus selection (Cooke et al 2018).…”
Section: Discussionmentioning
confidence: 99%
“…The present work suggests that by characterizing the sensory reweighting process first, one could promote selective training programs directed at optimizing selective weights of this process. However, it must also be clear that the presented approach can only become a clinical tool if we can reduce the number of trials needed to infer the model parameters, for example, by using adaptive stimulus selection (Cooke et al 2018).…”
Section: Discussionmentioning
confidence: 99%