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Group-Based Trajectory Model×成長混合モデル(GMM)×
分野Criminology統計学
系統Regression modelLatent structure
提唱年19931999
提唱者Daniel S. Nagin & Kenneth C. LandBengt O. Muthén & Kerby Shedden
種類Finite-mixture model of longitudinal developmental trajectoriesLatent class / longitudinal growth model
原典Nagin, D. S., & Land, K. C. (1993). Age, criminal careers, and population heterogeneity: Specification and estimation of a nonparametric, mixed Poisson model. Criminology, 31(3), 327–362. DOI ↗Muthén, B. O. & Shedden, K. (1999). Finite Mixture Modeling with Mixture Outcomes Using the EM Algorithm. Biometrics, 55(2), 463–469. DOI ↗
別名GBTM, Group-Based Modeling of Development, Nagin Trajectory Model, Semiparametric Group-Based ModelingBüyüme Karışım Modeli (Growth Mixture Model — GMM), GMM, latent class growth analysis extension, mixture latent growth curve model
関連45
概要Group-based trajectory modeling (GBTM) is a finite-mixture method that identifies clusters of individuals who follow similar developmental paths of a behavior — most famously offending — over age or time. Introduced to criminology by Daniel Nagin and Kenneth Land in 1993, it replaces the assumption of a single average trajectory with a small number of distinct latent groups, each described by its own polynomial curve and its share of the population.The Growth Mixture Model, introduced by Muthén and Shedden in 1999, is a longitudinal latent variable method that identifies distinct subpopulations — latent trajectory classes — each following its own growth curve over time. It extends the standard Latent Growth Curve (LGC) model by allowing the sample to be composed of an unknown mixture of classes with different intercepts, slopes, and variance structures.
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ScholarGate手法を比較: Group-Based Trajectory Model · GMM. 2026-06-24に以下より取得 https://scholargate.app/ja/compare