High dimensional discriminant rules with shrinkage estimators of the covariance matrix and mean vector
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초록

Linear discriminant analysis (LDA) is a typical method for classification problems with large dimensions and small samples. There are various types of LDA methods that are based on the different types of estimators for the covariance matrices and mean vectors. In this paper, we consider shrinkage methods based on a non -parametric approach. For the precision matrix, methods based on the sparsity structure or data splitting are examined. Regarding the estimation of mean vectors, Non -parametric Empirical Bayes (NPEB) methods and Nonparametric Maximum Likelihood Estimation (NPMLE) methods, also known as f -modeling and g -modeling, respectively, are adopted. The performance of linear discriminant rules based on combined estimation strategies of the covariance matrix and mean vectors are analyzed in this study. Particularly, the study presents a theoretical result on the performance of the NPEB method and compares it with previous studies. Simulation studies with various covariance matrices and mean vector structures are conducted to evaluate the methods discussed in this paper. Furthermore, real data examples such as gene expressions and EEG data are also presented.

키워드

High dimensional discriminant analysisNonparametric maximum likelihood estimationNonparametric empirical bayesEstimation of precision matrixNONPARAMETRIC EMPIRICAL BAYESNONLINEAR SHRINKAGEUNKNOWN COVARIANCECLASSIFICATIONPRECISION
제목
High dimensional discriminant rules with shrinkage estimators of the covariance matrix and mean vector
저자
Kim, JaehoanPark, JunyongPark, Hoyoung
DOI
10.1016/j.jspi.2024.106199
발행일
2025-01
유형
Article
저널명
Journal of Statistical Planning and Inference
234