Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
2013.
Jacobucci, Ross
Grimm, Kevin J.
and
McArdle, John J.
2016.
Regularized Structural Equation Modeling.
Structural Equation Modeling: A Multidisciplinary Journal,
Vol. 23,
Issue. 4,
p.
555.
Tutz, Gerhard
and
Berger, Moritz
2016.
Item-focussed Trees for the Identification of Items in Differential Item Functioning.
Psychometrika,
Vol. 81,
Issue. 3,
p.
727.
Berger, Moritz
and
Tutz, Gerhard
2016.
Detection of Uniform and Nonuniform Differential Item Functioning by Item-Focused Trees.
Journal of Educational and Behavioral Statistics,
Vol. 41,
Issue. 6,
p.
559.
Huang, Po-Hsien
Chen, Hung
and
Weng, Li-Jen
2017.
A Penalized Likelihood Method for Structural Equation Modeling.
Psychometrika,
Vol. 82,
Issue. 2,
p.
329.
Bollmann, Stella
Berger, Moritz
and
Tutz, Gerhard
2018.
Item-Focused Trees for the Detection of Differential Item Functioning in Partial Credit Models.
Educational and Psychological Measurement,
Vol. 78,
Issue. 5,
p.
781.
Huang, Po‐Hsien
2018.
A penalized likelihood method for multi‐group structural equation modelling.
British Journal of Mathematical and Statistical Psychology,
Vol. 71,
Issue. 3,
p.
499.
Wang, Ting
Strobl, Carolin
Zeileis, Achim
and
Merkle, Edgar C.
2018.
Score-Based Tests of Differential Item Functioning via Pairwise Maximum Likelihood Estimation.
Psychometrika,
Vol. 83,
Issue. 1,
p.
132.
Mair, Patrick
2018.
Modern Psychometrics with R.
p.
95.
Fu, Zhengqing
Liu, Goulin
Guo, Lanlan
and
Anita, Sebastian
2019.
Sequential Quadratic Programming Method for Nonlinear Least Squares Estimation and Its Application.
Mathematical Problems in Engineering,
Vol. 2019,
Issue. 1,
CHEN, Guanyu
and
CHEN, Ping
2019.
Explanatory item response theory models: Theory and application.
Advances in Psychological Science,
Vol. 27,
Issue. 5,
p.
937.
Kim, Seock-Ho
Cohen, Allan S.
Cho, Sun-Joo
and
Eom, Hyo Jin
2019.
Use of Information Criteria in the Study of Group Differences in Trace Lines.
Applied Psychological Measurement,
Vol. 43,
Issue. 2,
p.
95.
Jacobucci, Ross
Brandmaier, Andreas M.
and
Kievit, Rogier A.
2019.
A Practical Guide to Variable Selection in Structural Equation Modeling by Using Regularized Multiple-Indicators, Multiple-Causes Models.
Advances in Methods and Practices in Psychological Science,
Vol. 2,
Issue. 1,
p.
55.
Robitzsch, Alexander
and
George, Ann Cathrice
2019.
Handbook of Diagnostic Classification Models.
p.
549.
Omara, Maisa
Stamm, Tanja
Boecker, Maren
Ritschl, Valentin
Mosor, Erika
Salzberger, Thomas
Hirsch, Christian
and
Bekes, Katrin
2019.
Rasch model of the Child Perceptions Questionnaire for oral health–related quality of life.
The Journal of the American Dental Association,
Vol. 150,
Issue. 5,
p.
352.
Doebler, Anna
2019.
Looking at DIF From a New Perspective: A Structure-Based Approach Acknowledging Inherent Indefinability.
Applied Psychological Measurement,
Vol. 43,
Issue. 4,
p.
303.
Robitzsch, Alexander
2020.
Regularized Latent Class Analysis for Polytomous Item Responses: An Application to SPM-LS Data.
Journal of Intelligence,
Vol. 8,
Issue. 3,
p.
30.
Huang, Po-Hsien
2020.
Postselection Inference in Structural Equation Modeling.
Multivariate Behavioral Research,
Vol. 55,
Issue. 3,
p.
344.
Battauz, Michela
2020.
Regularized Estimation of the Four-Parameter Logistic Model.
Psych,
Vol. 2,
Issue. 4,
p.
269.
Liang, Xinya
and
Jacobucci, Ross
2020.
Regularized Structural Equation Modeling to Detect Measurement Bias: Evaluation of Lasso, Adaptive Lasso, and Elastic Net.
Structural Equation Modeling: A Multidisciplinary Journal,
Vol. 27,
Issue. 5,
p.
722.