FAVis: Visual Analytics of Factor Analysis for Psychological Research
July 19, 2024 Β· Declared Dead Β· π Visual ..
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Authors
Yikai Lu, Chaoli Wang
arXiv ID
2407.14072
Category
cs.HC: Human-Computer Interaction
Cross-listed
stat.AP,
stat.OT
Citations
1
Venue
Visual ..
Last Checked
4 months ago
Abstract
Psychological research often involves understanding psychological constructs through conducting factor analysis on data collected by a questionnaire, which can comprise hundreds of questions. Without interactive systems for interpreting factor models, researchers are frequently exposed to subjectivity, potentially leading to misinterpretations or overlooked crucial information. This paper introduces FAVis, a novel interactive visualization tool designed to aid researchers in interpreting and evaluating factor analysis results. FAVis enhances the understanding of relationships between variables and factors by supporting multiple views for visualizing factor loadings and correlations, allowing users to analyze information from various perspectives. The primary feature of FAVis is to enable users to set optimal thresholds for factor loadings to balance clarity and information retention. FAVis also allows users to assign tags to variables, enhancing the understanding of factors by linking them to their associated psychological constructs. Our user study demonstrates the utility of FAVis in various tasks.
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