Interindividual variations in associative visual learning: Exploration, description, and partition of response characteristics

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Version: Final published version
License: CC BY 4.0
Serval ID
serval:BIB_5FD5822F7BB0
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Interindividual variations in associative visual learning: Exploration, description, and partition of response characteristics
Journal
Behavior Research Methods
Author(s)
Brandner Catherine, Raynal Elsa, Ruggeri Paolo
ISSN
1554-3528
Publication state
Published
Issued date
24/08/2023
Peer-reviewed
Oui
Volume
56
Number
5
Pages
4643-4660
Language
english
Abstract
Relying on existing literature to identify suitable techniques for characterizing individual differences presents practical and methodological challenges. These challenges include the frequent absence of detailed descriptions of raw data, which hinders the assessment of analysis appropriateness, as well as the exclusion of data points deemed outliers, or the reliance on comparing only extreme groups by categorizing continuous variables into upper and lower quartiles. Despite the availability of algorithmic modeling in standard statistical software, investigations into individual differences predominantly focus on factor analysis and parametric tests. To address these limitations, this application-oriented study proposes a comprehensive approach that leverages behavioral responses through the use of signal detection theory and clustering techniques. Unlike conventional methods, signal detection theory considers both sensitivity and bias, offering insights into the intricate interplay between perceptual ability and decision-making processes. On the other hand, clustering techniques enable the identification and classification of distinct patterns within the dataset, allowing for the detection of singular behaviors that form the foundation of individual differences. In a broader framework, these combined approaches prove particularly advantageous when analyzing large and heterogeneous datasets provided by data archive platforms. By applying these techniques more widely, our understanding of the cognitive and behavioral processes underlying learning can be expedited and enhanced.
Keywords
General Psychology, Psychology (miscellaneous), Arts and Humanities (miscellaneous), Developmental and Educational Psychology, Experimental and Cognitive Psychology
Pubmed
Web of science
Open Access
Yes
Funding(s)
University of Lausanne
Create date
25/08/2023 8:48
Last modification date
08/08/2024 6:34
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