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Regressió amb penalització MCP×Modelització Exploratòria d'Equacions Estructurals×
CampPsicometriaPsicometria
FamíliaLatent structureLatent structure
Any d'origen20102009
Autor originalCun-Hui ZhangTihomir Asparouhov, Bengt Muthén
TipusPenalized regression with minimax concave penaltyHybrid exploratory-confirmatory factor modeling
Font seminalZhang, C. H. (2010). Nearly unbiased variable selection under minimax concave penalty. Annals of Statistics, 38(2), 894-942. DOI ↗Asparouhov, T., & Muthén, B. (2009). Exploratory structural equation modeling. Structural Equation Modeling, 16(3), 397-438. DOI ↗
ÀliesMCPESEM
Relacionats45
ResumMCP (Minimax Concave Penalty) is a variable selection method developed by Zhang (2010) that uses a concave penalty function for automated feature selection. Like SCAD, MCP addresses bias in lasso by avoiding shrinkage of large coefficients, but uses a different penalty shape that is computationally simpler than SCAD.Exploratory Structural Equation Modeling (ESEM) is a hybrid approach that combines exploratory factor analysis (EFA) with confirmatory factor analysis (CFA) and path modeling, developed by Asparouhov and Muthén (2009). ESEM relaxes restrictive zero-loading assumptions of traditional CFA, allowing all indicators to load on all factors, which can reveal cross-factor complexity and improve model fit while retaining the ability to test substantive structural theories.
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ScholarGateCompara mètodes: MCP Penalized Regression · Exploratory Structural Equation Modeling. Recuperat el 2026-06-18 de https://scholargate.app/ca/compare