高维潜在因子模型中的最优判别分析

Optimal discriminant analysis in high-dimensional latent factor models

Annals of Statistics · 2023
被引 0
ABS 4★

中文导读

本文提出一种基于主成分投影的高维分类方法,在潜在因子模型下证明其分类误差率在极小化极大意义下最优,适用于特征维度远大于样本量的场景。

Abstract

In high-dimensional classification problems, a commonly used approach is to first project the high-dimensional features into a lower-dimensional space, and base the classification on the resulting lower-dimensional projections. In this paper, we formulate a latent-variable model with a hidden low-dimensional structure to justify this two-step procedure and to guide which projection to choose. We propose a computationally efficient classifier that takes certain principal components (PCs) of the observed features as projections, with the number of retained PCs selected in a data-driven way. A general theory is established for analyzing such two-step classifiers based on any projections. We derive explicit rates of convergence of the excess risk of the proposed PC-based classifier. The obtained rates are further shown to be optimal up to logarithmic factors in the minimax sense. Our theory allows the lower dimension to grow with the sample size and is also valid even when the feature dimension (greatly) exceeds the sample size. Extensive simulations corroborate our theoretical findings. The proposed method also performs favorably relative to other existing discriminant methods on three real data examples.

高维分类潜在变量模型主成分分析判别分析降维