In this article, we illustrate ways in which generalizability theory (G-theory) can be used with continuous latent response variables (CLRVs) to address problems of scale coarseness resulting from categorization errors caused by representing ranges of continuous variables by discrete data points and transformation errors caused by unequal interval widths between those data points. The mechanism to address these problems is applying structural equation modeling (SEM) as a tool in deriving variance components needed to estimate indices of score consistency and validity. Illustrations include quantification of multiple sources of measurement error, use of non-nested and nested designs, derivation of indices of consistency for norm- and criterion-referenced interpretation of scores, estimation of effects when changing measurement procedures and designs, and disattenuation of correlation coefficients for measurement error. These illustrations underscore the effectiveness of G-theory with continuous latent response variables in providing stable indices of reliability and validity that are reasonably independent of the number of original scale points used, unevenness of scale intervals, and average degree of item skewness. We discuss general distinctions in reliability estimation within G-theory, SEM, and classical test theory; make specific recommendations for using G-theory on raw score and CLRV metrics; and provide computer code in an online supplement for doing all key analyses demonstrated in the article using R and M (PsycINFO Database Record (c) 2019 APA, all rights reserved).
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J Fam Psychol
January 2025
Department of Human Development and Family Studies, University of Wisconsin-Madison.
Although a large body of research has documented the importance of routines for children's development, the role of developmental timing of routines has received less attention. The present study examined how use of routines across the preschool period is linked to children's socioemotional adjustment. We used Year 3 and Year 5 data from the Future of Families and Child Wellbeing Study ( = 2,353; 48% female).
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February 2025
Research Centre on Child Studies (CIEC), Institute of Education of University of Minho, Braga, Portugal.
As students progress through university, they are simultaneously preparing for their professional lives alongside their academic learning. The transition from university studies to the labour market is a process that begins in education and continues after graduation until graduates have adapted to their working roles. Preparing to work requires that students conclude their studies and face several challenges posed by job searching and adaptation to the role of a worker.
View Article and Find Full Text PDFJ Marriage Fam
February 2025
Department of Sociology and Criminology, The Pennsylvania State University, University Park, PA, USA.
Objective: This article builds on work-family scholarship to document racial-ethnic variation in couples' work-family arrangements, i.e., how couples respond to their work and family demands.
View Article and Find Full Text PDFEur J Pharm Biopharm
January 2025
Duquesne University Graduate School for Pharmaceutical Sciences, Pittsburgh, PA 15282, United States; Duquesne Center for Pharmaceutical Technology, Duquesne University, Pittsburgh, PA 15282, United States. Electronic address:
The adoption of pure component models, such as iterative optimization technology (IOT) algorithms, is gaining significant interest in the pharmaceutical industry, primarily because of their calibration-free/minimal calibration requirements for process analytical technology applications. The IOT methods have recently demonstrated great potential for monitoring the quality of continuous powder mixtures by Near-infrared (NIR) spectroscopy. However, the dynamic conditions of continuous manufacturing processes may limit the effectiveness of such approaches.
View Article and Find Full Text PDFBiostat Epidemiol
October 2024
Department of Epidemiology and Biostatistics, Indiana University, Bloomington, Indiana, US.
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