The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory

The present paper argues for teaching statistics and psychometric theory using the GLM as a unifying conceptual framework. This helps students understand what analyses have in common, and also provides a firm grounding for understanding that more general cases of the GLM (canonical correlation analy...

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Main Author: Bruce Thompson
Format: Article
Language:English
Published: University of Arizona Libraries 2015-02-01
Series:Journal of Methods and Measurement in the Social Sciences
Subjects:
Online Access:https://journals.uair.arizona.edu/index.php/jmmss/article/view/18801
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spelling doaj-8bd6fea09061433b867c7b6254aa27122020-11-25T03:03:39ZengUniversity of Arizona LibrariesJournal of Methods and Measurement in the Social Sciences2159-78552015-02-0162304110.2458/v6i2.1880118385The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric TheoryBruce Thompson0Texas A&M University and Baylor College of MedicineThe present paper argues for teaching statistics and psychometric theory using the GLM as a unifying conceptual framework. This helps students understand what analyses have in common, and also provides a firm grounding for understanding that more general cases of the GLM (canonical correlation analysis and SEM) can be interpreted with the same rubric used throughout the GLM. And this approach also helps students better understand analyses that are not part of the GLM, such as predictive discriminant analysis (PDA). The approach helps students understand that all GLM analyses (a) are correlational, and thus are all susceptible to sampling error, (b) can yield r2-type effect sizes, and (c) use weights applied to measured variables to estimate the latent variables really of primary interest. DOI:10.2458/azu_jmmss_v6i2_thompsonhttps://journals.uair.arizona.edu/index.php/jmmss/article/view/18801general linear model, significance testing, effect sizes
collection DOAJ
language English
format Article
sources DOAJ
author Bruce Thompson
spellingShingle Bruce Thompson
The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
Journal of Methods and Measurement in the Social Sciences
general linear model, significance testing, effect sizes
author_facet Bruce Thompson
author_sort Bruce Thompson
title The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
title_short The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
title_full The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
title_fullStr The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
title_full_unstemmed The Case for Using the General Linear Model as a Unifying Conceptual Framework for Teaching Statistics and Psychometric Theory
title_sort case for using the general linear model as a unifying conceptual framework for teaching statistics and psychometric theory
publisher University of Arizona Libraries
series Journal of Methods and Measurement in the Social Sciences
issn 2159-7855
publishDate 2015-02-01
description The present paper argues for teaching statistics and psychometric theory using the GLM as a unifying conceptual framework. This helps students understand what analyses have in common, and also provides a firm grounding for understanding that more general cases of the GLM (canonical correlation analysis and SEM) can be interpreted with the same rubric used throughout the GLM. And this approach also helps students better understand analyses that are not part of the GLM, such as predictive discriminant analysis (PDA). The approach helps students understand that all GLM analyses (a) are correlational, and thus are all susceptible to sampling error, (b) can yield r2-type effect sizes, and (c) use weights applied to measured variables to estimate the latent variables really of primary interest. DOI:10.2458/azu_jmmss_v6i2_thompson
topic general linear model, significance testing, effect sizes
url https://journals.uair.arizona.edu/index.php/jmmss/article/view/18801
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