Generalized high-dimensional trace regression via nuclear norm regularization

A-Tier
Journal: Journal of Econometrics
Year: 2019
Volume: 212
Issue: 1
Pages: 177-202

Authors (3)

Fan, Jianqing (Princeton University) Gong, Wenyan (not in RePEc) Zhu, Ziwei (not in RePEc)

Score contribution per author:

1.341 = (α=2.01 / 3 authors) × 2.0x A-tier

α: calibrated so average coauthorship-adjusted count equals average raw count

Abstract

We study the generalized trace regression with a near low-rank regression coefficient matrix, which extends notion of sparsity for regression coefficient vectors. Specifically, given a matrix covariate X, the probability density function of the response Y is f(Y|X)=c(Y)exp(ϕ−1−Yη∗+b(η∗)), where η∗=tr(Θ∗TX). This model accommodates various types of responses and embraces many important problem setups such as reduced-rank regression, matrix regression that accommodates a panel of regressors, matrix completion, among others. We estimate Θ∗ through minimizing empirical negative log-likelihood plus nuclear norm penalty. We first establish a general theory and then for each specific problem, we derive explicitly the statistical rate of the proposed estimator. They all match the minimax rates in the linear trace regression up to logarithmic factors. Numerical studies confirm the rates we established and demonstrate the advantage of generalized trace regression over linear trace regression when the response is dichotomous. We also show the benefit of incorporating nuclear norm regularization in dynamic stock return prediction and in image classification.

Technical Details

RePEc Handle
repec:eee:econom:v:212:y:2019:i:1:p:177-202
Journal Field
Econometrics
Author Count
3
Added to Database
2026-01-25