The location model for mixtures of categorical and continuous variables
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Publication:1801908
DOI10.1007/BF02638452zbMath0775.62153MaRDI QIDQ1801908
Publication date: 17 August 1993
Published in: Journal of Classification (Search for Journal in Brave)
Related Items (12)
The effect of across-location heteroscedasticity on the classification of mixed categorical and continuous data ⋮ On the one-sample location hypothesis for mixed bivariate data ⋮ Distance Metrics and Clustering Methods for Mixed‐type Data ⋮ General mixed-data model: Extension of general location and grouped continuous models ⋮ Model-based clustering of Gaussian copulas for mixed data ⋮ Classification with discrete and continuous variables via general mixed-data models ⋮ Regularization of the location model in discrimination with mixed discrete and continuous variables ⋮ Error rates in classification consisting of discrete and continuous variables in the presence of covariates ⋮ Regularized classification for mixed continuous and categorical variables under across-location heteroscedasticity ⋮ A semiparametric method for clustering mixed data ⋮ Dynamic linear discriminant analysis in high dimensional space ⋮ A Joint Regression Analysis for Genetic Association Studies with Outcome Stratified Samples
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