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다수준 탐색적 요인분석 (ML-EFA)×이요인 모형 (일반 요인 및 특정 요인)×
분야심리측정학심리측정학
계열Latent structureLatent structure
기원 연도19941937
창시자Bengt O. MuthénHolzinger & Swineford (1937); modern revival by Reise (2012)
유형Latent variable / multilevel dimension reductionConfirmatory latent variable model
원전Muthén, B. O. (1994). Multilevel covariance structure analysis. Sociological Methods & Research, 22(3), 376–398. DOI ↗Reise, S. P. (2012). The Rediscovery of Bifactor Measurement Models. Multivariate Behavioral Research, 47(5), 667–696. DOI ↗
별칭ML-EFA, multilevel factor analysis, two-level exploratory factor analysis, hierarchical exploratory factor analysisBifaktör Modeli — Genel ve Spesifik Faktörler, hierarchical factor model, general-specific factor model, Schmid-Leiman model
관련36
요약Multilevel exploratory factor analysis uncovers latent factor structures simultaneously at two or more levels of a data hierarchy — for example, both within individuals and between groups — without imposing a fixed structure in advance. It is essential whenever survey or test items are collected from respondents nested inside classrooms, organisations, or clinics.The bifactor measurement model specifies that every indicator loads simultaneously on a single general factor and on one of several specific (group) factors. Formally introduced by Holzinger and Swineford in 1937 and brought into mainstream psychometrics by Reise (2012), it is now the standard tool for evaluating whether a multidimensional scale can legitimately yield a single composite score.
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