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강건 대응 분석×다중 대응 분석 (MCA)×
분야통계학통계학
계열Latent structureLatent structure
기원 연도2000s (robust extensions of CA developed since the early 2000s)2006
창시자Greenacre (CA); robust extensions by Croux, Ruiz-Gazen and colleaguesGreenacre & Blasius
유형Robust dimension reduction for contingency tablesMultivariate exploratory ordination
원전Croux, C. & Ruiz-Gazen, A. (2005). High breakdown estimators for principal components: the projection-pursuit approach revisited. Journal of Multivariate Analysis, 95(1), 206–226. DOI ↗Greenacre, M., & Blasius, J. (Eds.). (2006). Multiple Correspondence Analysis and Related Methods. Chapman & Hall/CRC. ISBN: 978-1-58488-628-0
별칭RCA, outlier-resistant correspondence analysis, robust CAMCA, Homogeneity Analysis, Multiple Nominal Component Analysis, Çoklu Uyum Analizi
관련52
요약Robust Correspondence Analysis (RCA) extends classical correspondence analysis to contingency tables that contain outlying rows or columns. By replacing the standard singular value decomposition with a robust alternative, RCA produces biplots and coordinate maps that accurately reflect the dominant association structure even when atypical cells or categories exert undue influence on the standard solution.Multiple Correspondence Analysis (MCA) is a multivariate ordination technique designed to explore and visualize associations among three or more categorical variables simultaneously. By mapping both observations and variable categories onto a shared low-dimensional space, MCA reveals hidden structure in nominal or ordinal survey data. The method was comprehensively systematized and extended by Michael Greenacre and Jorg Blasius in their 2006 edited volume, building on earlier geometric data analysis traditions developed in France by Jean-Paul Benzecri during the 1960s and 1970s.
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