Optimal Feature Selection in High-Dimensional Discriminant Analysis

06/27/2013
by   Mladen Kolar, et al.
0

We consider the high-dimensional discriminant analysis problem. For this problem, different methods have been proposed and justified by establishing exact convergence rates for the classification risk, as well as the l2 convergence results to the discriminative rule. However, sharp theoretical analysis for the variable selection performance of these procedures have not been established, even though model interpretation is of fundamental importance in scientific data analysis. This paper bridges the gap by providing sharp sufficient conditions for consistent variable selection using the sparse discriminant analysis (Mai et al., 2012). Through careful analysis, we establish rates of convergence that are significantly faster than the best known results and admit an optimal scaling of the sample size n, dimensionality p, and sparsity level s in the high-dimensional setting. Sufficient conditions are complemented by the necessary information theoretic limits on the variable selection problem in the context of high-dimensional discriminant analysis. Exploiting a numerical equivalence result, our method also establish the optimal results for the ROAD estimator (Fan et al., 2012) and the sparse optimal scaling estimator (Clemmensen et al., 2011). Furthermore, we analyze an exhaustive search procedure, whose performance serves as a benchmark, and show that it is variable selection consistent under weaker conditions. Extensive simulations demonstrating the sharpness of the bounds are also provided.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/23/2014

Optimal variable selection in multi-group sparse discriminant analysis

This article considers the problem of multi-group classification in the ...
research
10/30/2018

Strong consistency of the AIC, BIC, C_p and KOO methods in high-dimensional multivariate linear regression

Variable selection is essential for improving inference and interpretati...
research
12/05/2019

A Convex Optimization Approach to High-Dimensional Sparse Quadratic Discriminant Analysis

In this paper, we study high-dimensional sparse Quadratic Discriminant A...
research
09/29/2021

A gradient-based variable selection for binary classification in reproducing kernel Hilbert space

Variable selection is essential in high-dimensional data analysis. Altho...
research
09/12/2018

Prediction and estimation consistency of sparse multi-class penalized optimal scoring

Sparse linear discriminant analysis via penalized optimal scoring is a s...
research
12/30/2021

Variable selection, monotone likelihood ratio and group sparsity

In the pivotal variable selection problem, we derive the exact non-asymp...
research
05/11/2016

Asymptotic equivalence of regularization methods in thresholded parameter space

High-dimensional data analysis has motivated a spectrum of regularizatio...

Please sign up or login with your details

Forgot password? Click here to reset