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Robustna kanonička korelacijska analiza (Robust CCA)×Kanonička korelacijska analiza×
PodručjeStatistikaStatistika
ObiteljLatent structureLatent structure
Godina nastanka20031936
TvoracCroux & Dehon (building on Hotelling's CCA framework)Harold Hotelling
VrstaRobust multivariate associationMultivariate linear dimension reduction and association
Temeljni izvorCroux, C. & Dehon, C. (2003). Robust estimation of the canonical correlations. Computational Statistics, 18(3), 555–569. link ↗Hotelling, H. (1936). Relations between two sets of variates. Biometrika, 28(3–4), 321–377. DOI ↗
Drugi naziviRobust CCA, RCCA, robust CCA, outlier-resistant canonical correlationCCA, canonical variate analysis, canonical analysis, multiple canonical correlation
Srodne44
SažetakRobust canonical correlation analysis extends classical CCA by replacing the standard sample covariance matrix with a robust estimator — such as the Minimum Covariance Determinant (MCD) or S-estimator — so that outlying observations do not distort the estimated canonical correlations and canonical variates between two sets of variables.Canonical Correlation Analysis (CCA) is a multivariate statistical method that identifies pairs of linear combinations — one from each of two variable sets — such that the correlation between each pair is maximised. Introduced by Harold Hotelling in his landmark 1936 Biometrika paper, CCA provides the most general linear framework for studying the association between two multivariate batteries of measurements, and many classical procedures (multiple regression, MANOVA, discriminant analysis) are special cases of it.
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ScholarGateUsporedite metode: Robust Canonical Correlation Analysis · Canonical Correlation Analysis. Preuzeto 2026-06-18 s https://scholargate.app/hr/compare