Back To Index Previous Article Next Article Full Text

Statistica Sinica 35 (2025), 1991-2012

HIGH-DIMENSIONAL SCALE INVARIANT
DISCRIMINANT ANALYSIS

Ming Li, Cheng Wang, Yanqing Yin and Shurong Zheng*

Shandong Technology and Business University, Shanghai Jiao Tong University,

Nanjing Audit University and Northeast Normal University

Abstract: In this paper, we propose a scale invariant linear discriminant analysis classifier for high-dimensional data with dense signals. The method is valid for both cases that the data dimension is smaller or greater than the sample size. Based on recent advances of the sample correlation matrix in random matrix theory, we derive the asymptotic limits of the error rate which characterizes the influences of the data dimension and the tuning parameter. The major advantage of our proposed classifier is scale invariant and it is applicable to any variances of the feature. Several numerical studies are investigated and our proposed classifier performs favorably in comparison to some existing methods.

Key words and phrases: Dimension effect, discriminant analysis, random matrix theory, sample correlation matrix, scale invariant.

Back To Index Previous Article Next Article Full Text