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期刊名:Multivariate behavioral research

缩写:MULTIVAR BEHAV RES

ISSN:0027-3171

e-ISSN:1532-7906

IF/分区:3.5/Q1

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Julia Norget,Alexa Weiss,Axel Mayer Julia Norget
As the popularity of the experience-sampling methodology rises, there is a growing need for suitable analytical procedures. These studies often aim to separate fleeting situation-specific influences from more enduring ones. Latent state-tra...
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Yi Jin,Jinsong Chen Yi Jin
Variable selection in structural equation modeling has merged as a new concern in social and psychological studies. Researchers often aim to strike a balance between achieving predictive accuracy and fostering parsimonious explanations by i...
José Roberto Silva Dos Santos,Caio Lucidius Naberezny Azevedo,Jean-Paul Fox José Roberto Silva Dos Santos
In this work, we introduce a multiple-group longitudinal IRT model that accounts for skewed latent trait distributions. Our approach extends the model proposed by Santos et al. in 2022, which introduced a general class of longitudinal IRT m...
Sooyong Lee,Tiffany A Whittaker Sooyong Lee
This study addresses the challenge of doubly-censoring effects in longitudinal data structures, particularly within latent growth curve models (LGCMs). Censoring can severely bias estimates and inferences, distorting the relationships betwe...
Johan Lyrvall,Roberto Di Mari,Zsuzsa Bakk et al. Johan Lyrvall et al.
Latent class (LC) analysis is a model-based clustering approach for categorical data, with a wide range of applications in the social sciences and beyond. When the data have a hierarchical structure, the multilevel LC model can be used to a...