Prezentare
     Distinctii / Awards
     Departamente
     Cercetare
     Parteneri
     Alumni
     Sustenabilitate
     Oferta educationala
     Studenti
     Admitere
     Examen finalizare studii
     International
     Alegeri academice


Lăcrămioara Radomir, Raluca Ciornea, Huiwen Wang, Yide Liu, Christian M. Ringle & Marko Sarstedt (Editors), State of the Art in Partial Least Squares Structural Equation Modeling (PLS-SEM), Springer, 2023
vezi si alte aparitii editoriale

Facebook LinkedIn Twitter
Contact
Str. Teodor Mihali, Nr. 58-60 400591,
Cluj Napoca, Romania
Tel: +40 264-41.86.55
Fax: +40 264-41.25.70

   
Universitatea Babes-Bolyai | Noutati UBB
FSEGA Online | FSEGA SIS | FSEGA Alumni | Sustenabilitate
Executive Education
Contact | Harta Site | Viziteaza FSEGA

Cho, Hwang, Sarstedt & Ringle (2022) Structural Equation Modeling: A Multidisciplinary Journal [Domenii conexe, Q1]

Autor: Ovidiu Ioan Moisescu

Publicat: 21 Aprilie 2022


Cho, G., Hwang, H., Sarstedt, M., & Ringle, C.M. (2022) A Prediction-Oriented Specification Search Algorithm for Generalized Structured Component Analysis. Structural Equation Modeling: A Multidisciplinary Journal, 29(4), 1070-5511.

DOI: https://doi.org/10.1080/10705511.2022.2057315

✓ Publisher: Taylor & Francis
✓ Categories: Mathematics, Interdisciplinary Applications; Social Sciences, Mathematical Methods
✓ Article Influence Score (AIS): 2.951 (2022) / Q1 in all categories

Abstract: Generalized structured component analysis (GSCA) is used for specifying and testing the relationships between observed variables and components. GSCA can perform model selection by comparing theoretically established models. In practice, however, theories may not always completely and unambiguously specify the relationships between variables in the model. In such situations, a specification search strategy allows for exploring potential relationships between variables in a data-driven manner. A specification search based on prediction of unseen observations is attractive as it does not require the provision of theoretically plausible models. To date, GSCA has not been equipped with such a specification search strategy. Addressing this limitation, we propose a prediction-oriented specification search algorithm for GSCA, which reveals the best combination of predictors that minimizes each target variable’s prediction error. We conduct a simulation study to examine the new algorithm’s performance and apply it to real data to further investigate and demonstrate its practical usefulness.



inapoi la stiri   vezi evenimentele   home


       Copyright © 29-03-2024 FSEGA. Protectia datelor cu caracter personal FSEGA. Protectia datelor cu caracter personal UBB.
       Web Developer  Dr. Daniel Mican   Graphic Design  Mihai-Vlad Guta