Abstract

People have to sort numerous objects into a large number of meaningful categories while operating in varying contexts. This requires identifying the visual features that best predict the ‘essence’ of objects (e.g., edibility), rather than categorizing objects based on the most salient features in a given context. To gain this capacity, visual category learning (VCL) relies on multiple cognitive processes. These may include unsupervised statistical learning, that requires observing multiple objects for learning the statistics of their features. Other learning processes enable incorporating different sources of supervisory information, alongside the visual features of the categorized objects, from which the categorical relations between few objects can be deduced. These deductions enable inferring that objects from the same category may differ from one another in some high-saliency feature dimensions, whereas lower-saliency feature dimensions can best differentiate objects from distinct categories. Here I illustrate how feature saliency affects VCL, by also discussing kinds of supervisory information enabling reflective categorization. Arguably, principles debated here are often being ignored in categorization studies.

Highlights

  • Reviewed by: Dragan Rangelov, Ludwig-Maximilian University of Munich, Germany Michael L

  • Much is still unknown about the underlying cognitive mechanisms of visual category learning (VCL)

  • Interactive effects between feature saliency and supervisory information that is made available to subjects in VCL studies are too often underestimated or overlooked

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Summary

Rubi Hammer*

Department of Communication Sciences and Disorders, Interdepartmental Neuroscience Program, Northwestern University, Evanston, IL, USA Reviewed by: Dragan Rangelov, Ludwig-Maximilian University of Munich, Germany Michael L. Mack, The University of Texas at Austin, USA Specialty section: This article was submitted to Cognition, a section of the journal

Frontiers in Psychology
Impact of feature saliency
Impact of Respective Feature Saliency on VCL
Supervision Allows Categorization to be Less Affected by Feature Saliency
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