Literature DB >> 33791940

Visual statistical learning is modulated by arbitrary and natural categories.

Leeland L Rogers1, Su Hyoun Park2, Timothy J Vickery2.   

Abstract

Visual statistical learning (VSL) describes the unintentional extraction of statistical regularities from visual environments across time or space, and is typically studied using novel stimuli (e.g., symbols unfamiliar to participants) and using familiarization procedures that are passive or require only basic vigilance. The natural visual world, however, is rich with a variety of complex visual stimuli, and we experience that world in the presence of goal-driven behavior including overt learning of other kinds. To examine how VSL responds to such contexts, we exposed subjects to statistical contingencies as they learned arbitrary categorical mappings of unfamiliar stimuli (fractals, Experiment 1) or familiar stimuli with preexisting categorical boundaries (faces and scenes, Experiment 2). In a familiarization stage, subjects learned by trial and error the arbitrary mappings between stimuli and one of two responses. Unbeknownst to participants, items were paired such that they always appeared together in the stream. Pairs were equally likely to be of the same or different category. In a pair recognition stage to assess VSL, subjects chose between a target pair and a foil pair. In both experiments, subjects' VSL was shaped by arbitrary categories: same-category pairs were learned better than different-category pairs. Natural categories (Experiment 2) also played a role, with subjects learning same-natural-category pairs at higher rates than different-category pairs, an effect that did not interact with arbitrary mappings. We conclude that learning goals of the observer and preexisting knowledge about the structure of the world play powerful roles in the incidental learning of novel statistical information.

Entities:  

Keywords:  Categorization; Category learning; Implicit learning; Incidental learning; Visual statistical learning

Year:  2021        PMID: 33791940     DOI: 10.3758/s13423-021-01917-w

Source DB:  PubMed          Journal:  Psychon Bull Rev        ISSN: 1069-9384


  15 in total

1.  Unsupervised statistical learning of higher-order spatial structures from visual scenes.

Authors:  J Fiser; R N Aslin
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2.  Compression in visual working memory: using statistical regularities to form more efficient memory representations.

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3.  Statistical learning by 8-month-old infants.

Authors:  J R Saffran; R N Aslin; E L Newport
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4.  Toward a universal law of generalization for psychological science.

Authors:  R N Shepard
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5.  Statistical learning of tone sequences by human infants and adults.

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6.  Statistical learning of higher-order temporal structure from visual shape sequences.

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Journal:  J Exp Psychol Learn Mem Cogn       Date:  2002-05       Impact factor: 3.051

Review 7.  Human category learning.

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9.  Evidence for representations of perceptually similar natural categories by 3-month-old and 4-month-old infants.

Authors:  P C Quinn; P D Eimas; S L Rosenkrantz
Journal:  Perception       Date:  1993       Impact factor: 1.490

10.  Temporal binding within and across events.

Authors:  Sarah DuBrow; Lila Davachi
Journal:  Neurobiol Learn Mem       Date:  2016-07-12       Impact factor: 2.877

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  1 in total

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