Sequential Linear Discriminant Analysis in High Dimensions Using Individual Discriminant Functions

05/08/2022
by   Seungchul Baek, et al.
0

High dimensional classification has been highlighted for last two decades and much research has been conducted in order to circumvent challenges encountered in high dimensions. While existing methods have focused mainly on developing classification rules assuming independence of covariates or using regularization on the sample covariance matrix or the sample mean vector or among others, we propose a novel approach that employs the "discriminatory power" of each covariate, selects a set of important variables yielding the lowest misclassification rate empirically, and constructs the optimal linear classifier with selected variables. We carry out simulation studies and analyze real data sets to illustrate the performance of our proposed classifier by comparing it with existing classifiers.

READ FULL TEXT

page 20

page 21

page 22

research
06/25/2020

High-Dimensional Quadratic Discriminant Analysis under Spiked Covariance Model

Quadratic discriminant analysis (QDA) is a widely used classification te...
research
04/11/2020

Robust Generalised Quadratic Discriminant Analysis

Quadratic discriminant analysis (QDA) is a widely used statistical tool ...
research
02/03/2021

Unobserved classes and extra variables in high-dimensional discriminant analysis

In supervised classification problems, the test set may contain data poi...
research
12/14/2021

Linear Discriminant Analysis with High-dimensional Mixed Variables

Datasets containing both categorical and continuous variables are freque...
research
05/11/2018

Covariate-Adjusted Tensor Classification in High-Dimensions

In contemporary scientific research, it is of great interest to predict ...
research
11/28/2010

A ROAD to Classification in High Dimensional Space

For high-dimensional classification, it is well known that naively perfo...
research
04/09/2018

High-dimensional Linear Discriminant Analysis: Optimality, Adaptive Algorithm, and Missing Data

This paper aims to develop an optimality theory for linear discriminant ...

Please sign up or login with your details

Forgot password? Click here to reset