A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines

Research on gender disparities in STEM (Science, Technology, Engineering, and Mathematics) has paid little attention to the fact that not all STEM disciplines experience the same degree of gender imbalance. Previous research has primarily examined a single STEM discipline or combined STEM discipline...

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Main Authors: Yang Yang, Joan M Barth
Format: Article
Language:English
Published: SAGE Publishing 2017-10-01
Series:Methodological Innovations
Online Access:https://doi.org/10.1177/2059799117738704
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spelling doaj-ee27c703fc134bf19f460ea0495633d02020-11-25T03:30:27ZengSAGE PublishingMethodological Innovations2059-79912017-10-011010.1177/2059799117738704A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplinesYang Yang0Joan M Barth1Department of Special Education, Counseling, and Student Affairs, Kansas State University, Manhattan, KS, USAThe University of Alabama, Institute for Social Science Research, Tuscaloosa, AL, USAResearch on gender disparities in STEM (Science, Technology, Engineering, and Mathematics) has paid little attention to the fact that not all STEM disciplines experience the same degree of gender imbalance. Previous research has primarily examined a single STEM discipline or combined STEM disciplines in their analyses. This study addressed some of the limitations of previous research using an innovative statistical approach, Q factor analysis (QFA). QFA is used to explore multifaceted human perceptions, behaviors, and experiences. It enables researchers to categorize people based on their pattern of responses and opinions on a certain topic, in contrast to the more commonly used R factor analysis that categorizes variables. QFA was applied to a sample of 98 female undergraduate students who were enrolled in introductory STEM courses. Participants competed a survey that assessed their attitudes, experiences and beliefs about math, science, and computers. Questions tapped into constructs typically used in social cognitive models of academic and career choices. Two typologies emerged from the analyses. The math-computer group had favorable attitudes and beliefs toward math and computers and less interest in science; whereas the science group had more favorable attitudes and beliefs towards science. Participants’ major choice and self-reported academic support aligned with the two groups in ways that were consistent with the groups’ interests. The study demonstrates the potential for QFA to be applied with various types of data on a wide range of topics and to address questions that are not easily answered using traditional statistical approaches.https://doi.org/10.1177/2059799117738704
collection DOAJ
language English
format Article
sources DOAJ
author Yang Yang
Joan M Barth
spellingShingle Yang Yang
Joan M Barth
A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
Methodological Innovations
author_facet Yang Yang
Joan M Barth
author_sort Yang Yang
title A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
title_short A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
title_full A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
title_fullStr A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
title_full_unstemmed A Q factor analysis approach to understanding female college students’ attitudes toward multiple STEM disciplines
title_sort q factor analysis approach to understanding female college students’ attitudes toward multiple stem disciplines
publisher SAGE Publishing
series Methodological Innovations
issn 2059-7991
publishDate 2017-10-01
description Research on gender disparities in STEM (Science, Technology, Engineering, and Mathematics) has paid little attention to the fact that not all STEM disciplines experience the same degree of gender imbalance. Previous research has primarily examined a single STEM discipline or combined STEM disciplines in their analyses. This study addressed some of the limitations of previous research using an innovative statistical approach, Q factor analysis (QFA). QFA is used to explore multifaceted human perceptions, behaviors, and experiences. It enables researchers to categorize people based on their pattern of responses and opinions on a certain topic, in contrast to the more commonly used R factor analysis that categorizes variables. QFA was applied to a sample of 98 female undergraduate students who were enrolled in introductory STEM courses. Participants competed a survey that assessed their attitudes, experiences and beliefs about math, science, and computers. Questions tapped into constructs typically used in social cognitive models of academic and career choices. Two typologies emerged from the analyses. The math-computer group had favorable attitudes and beliefs toward math and computers and less interest in science; whereas the science group had more favorable attitudes and beliefs towards science. Participants’ major choice and self-reported academic support aligned with the two groups in ways that were consistent with the groups’ interests. The study demonstrates the potential for QFA to be applied with various types of data on a wide range of topics and to address questions that are not easily answered using traditional statistical approaches.
url https://doi.org/10.1177/2059799117738704
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