Orthogonal Statistical Learning with Self-Concordant Loss
Machine Learning
2022-06-22 v2 Information Theory
Machine Learning
math.IT
Abstract
Orthogonal statistical learning and double machine learning have emerged as general frameworks for two-stage statistical prediction in the presence of a nuisance component. We establish non-asymptotic bounds on the excess risk of orthogonal statistical learning methods with a loss function satisfying a self-concordance property. Our bounds improve upon existing bounds by a dimension factor while lifting the assumption of strong convexity. We illustrate the results with examples from multiple treatment effect estimation and generalized partially linear modeling.
Cite
@article{arxiv.2205.00350,
title = {Orthogonal Statistical Learning with Self-Concordant Loss},
author = {Lang Liu and Carlos Cinelli and Zaid Harchaoui},
journal= {arXiv preprint arXiv:2205.00350},
year = {2022}
}
Comments
COLT 2022