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Learning and inference using complex generative models in a spatial localization task

A large body of research has established that, under relatively simple task conditions, human observers integrate uncertain sensory information with learned prior knowledge in an approximately Bayes-optimal manner. However, in many natural tasks, observers must perform this sensory-plus-prior integr...

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Autores principales: Bejjanki, Vikranth R., Knill, David C., Aslin, Richard N.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4790422/
https://www.ncbi.nlm.nih.gov/pubmed/26967015
http://dx.doi.org/10.1167/16.5.9
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author Bejjanki, Vikranth R.
Knill, David C.
Aslin, Richard N.
author_facet Bejjanki, Vikranth R.
Knill, David C.
Aslin, Richard N.
author_sort Bejjanki, Vikranth R.
collection PubMed
description A large body of research has established that, under relatively simple task conditions, human observers integrate uncertain sensory information with learned prior knowledge in an approximately Bayes-optimal manner. However, in many natural tasks, observers must perform this sensory-plus-prior integration when the underlying generative model of the environment consists of multiple causes. Here we ask if the Bayes-optimal integration seen with simple tasks also applies to such natural tasks when the generative model is more complex, or whether observers rely instead on a less efficient set of heuristics that approximate ideal performance. Participants localized a “hidden” target whose position on a touch screen was sampled from a location-contingent bimodal generative model with different variances around each mode. Over repeated exposure to this task, participants learned the a priori locations of the target (i.e., the bimodal generative model), and integrated this learned knowledge with uncertain sensory information on a trial-by-trial basis in a manner consistent with the predictions of Bayes-optimal behavior. In particular, participants rapidly learned the locations of the two modes of the generative model, but the relative variances of the modes were learned much more slowly. Taken together, our results suggest that human performance in a more complex localization task, which requires the integration of sensory information with learned knowledge of a bimodal generative model, is consistent with the predictions of Bayes-optimal behavior, but involves a much longer time-course than in simpler tasks.
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spelling pubmed-47904222016-03-21 Learning and inference using complex generative models in a spatial localization task Bejjanki, Vikranth R. Knill, David C. Aslin, Richard N. J Vis Article A large body of research has established that, under relatively simple task conditions, human observers integrate uncertain sensory information with learned prior knowledge in an approximately Bayes-optimal manner. However, in many natural tasks, observers must perform this sensory-plus-prior integration when the underlying generative model of the environment consists of multiple causes. Here we ask if the Bayes-optimal integration seen with simple tasks also applies to such natural tasks when the generative model is more complex, or whether observers rely instead on a less efficient set of heuristics that approximate ideal performance. Participants localized a “hidden” target whose position on a touch screen was sampled from a location-contingent bimodal generative model with different variances around each mode. Over repeated exposure to this task, participants learned the a priori locations of the target (i.e., the bimodal generative model), and integrated this learned knowledge with uncertain sensory information on a trial-by-trial basis in a manner consistent with the predictions of Bayes-optimal behavior. In particular, participants rapidly learned the locations of the two modes of the generative model, but the relative variances of the modes were learned much more slowly. Taken together, our results suggest that human performance in a more complex localization task, which requires the integration of sensory information with learned knowledge of a bimodal generative model, is consistent with the predictions of Bayes-optimal behavior, but involves a much longer time-course than in simpler tasks. The Association for Research in Vision and Ophthalmology 2016-03-10 /pmc/articles/PMC4790422/ /pubmed/26967015 http://dx.doi.org/10.1167/16.5.9 Text en http://creativecommons.org/licenses/by-nc-nd/4.0/ This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
spellingShingle Article
Bejjanki, Vikranth R.
Knill, David C.
Aslin, Richard N.
Learning and inference using complex generative models in a spatial localization task
title Learning and inference using complex generative models in a spatial localization task
title_full Learning and inference using complex generative models in a spatial localization task
title_fullStr Learning and inference using complex generative models in a spatial localization task
title_full_unstemmed Learning and inference using complex generative models in a spatial localization task
title_short Learning and inference using complex generative models in a spatial localization task
title_sort learning and inference using complex generative models in a spatial localization task
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4790422/
https://www.ncbi.nlm.nih.gov/pubmed/26967015
http://dx.doi.org/10.1167/16.5.9
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