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Analyse robuste des classes latentes×Analyse de regroupement×
DomaineStatistiqueStatistique
FamilleLatent structureLatent structure
Année d'origine2000s1939–1967
Auteur d'origineBuilding on Hennig (2004) and Vermunt & Magidson (2004)Robert C. Tryon (early development); Ward (1963) for hierarchical; MacQueen (1967) for k-means
TypeRobust latent variable / mixture modelUnsupervised classification / grouping
Source fondatriceHennig, C. (2004). Breakdown points for maximum likelihood estimators of location-scale mixtures. Annals of Statistics, 32(4), 1313–1340. DOI ↗Everitt, B. S., Landau, S., Leese, M. & Stahl, D. (2011). Cluster Analysis (5th ed.). Wiley. ISBN: 978-0470749913
Aliasrobust LCA, outlier-resistant latent class analysis, trimmed-likelihood latent class analysisclustering, unsupervised classification, data clustering, numerical taxonomy
Apparentées65
RésuméRobust latent class analysis (robust LCA) extends the standard latent class model by incorporating outlier-resistant estimation techniques — such as trimmed likelihood, M-estimation, or downweighting — so that atypical response patterns do not distort the recovered class structure or class membership probabilities.Cluster analysis is a family of unsupervised multivariate techniques that partition a set of objects or observations into internally homogeneous, mutually distinct groups — clusters — based on measured characteristics, without any prior knowledge of group membership. It is widely used in market segmentation, bioinformatics, psychology, and social science to reveal natural groupings in data.
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ScholarGateComparer des méthodes: Robust Latent Class Analysis · Cluster Analysis. Consulté le 2026-06-17 sur https://scholargate.app/fr/compare