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분야통계학통계학
계열Regression modelRegression model
기원 연도2001 (robust GLM); 1970s–1980s (multinomial logistic regression)2001
창시자Cantoni & Ronchetti (robust GLM framework); Agresti (multinomial logistic regression)Cantoni & Ronchetti (2001); Bondell (2008)
유형Robust classification modelRobust generalized linear model (binary outcome)
원전Cantoni, E., & Ronchetti, E. (2001). Robust inference for generalized linear models. Journal of the American Statistical Association, 96(455), 1022–1030. DOI ↗Cantoni, E. & Ronchetti, E. (2001). Robust Inference for Generalized Linear Models. Journal of the American Statistical Association, 96(455), 1022-1030. DOI ↗
별칭robust polychotomous logistic regression, outlier-resistant multinomial regression, robust nominal logistic regression, M-estimation multinomial logistic regressionrobust binary regression, weighted logistic regression, Mallows-type logistic regression, Robust Lojistik Regresyon
관련55
요약Robust multinomial logistic regression extends the standard multinomial logit model to handle outliers, influential observations, and mild misspecification of the response distribution. It replaces the conventional maximum likelihood score equations with bounded influence functions (M-estimation) or pairs maximum likelihood with sandwich variance estimators, so that a small fraction of anomalous cases cannot distort the estimated log-odds ratios across outcome categories.Robust Logistic Regression is a variant of logistic regression that is resistant to outliers and leverage points, fitting a binary or categorical outcome with Mallows-type weighted estimation. The robust framework for generalized linear models was developed by Cantoni and Ronchetti (2001), with a weighting approach later refined by Bondell (2008).
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ScholarGate방법 비교: Robust Multinomial Logistic Regression · Robust Logistic Regression. 2026-06-17에 다음에서 검색함: https://scholargate.app/ko/compare