WITHDRAWN Bridging Root-n and Non-standard Asymptotics: Dimension-agnostic Adaptive Inference in M-Estimation

Arun Kumar Kuchibhotla Co-Author
Carnegie Mellon University
 
Kenta Takatsu First Author
Carnegie Mellon University
 
Sunday, Aug 3: 2:20 PM - 2:35 PM
2566 
Contributed Papers 
Music City Center 
This manuscript studies a general approach to construct confidence sets for the solution of population-level optimization, commonly referred to as M-estimation. Statistical inference for M-estimation poses significant challenges due to the non-standard limiting behaviors of the corresponding estimator, which arise in settings with increasing dimension of parameters, non-smooth objectives, or constraints. We propose a simple and unified method that guarantees validity in both regular and irregular cases. Moreover, we provide a comprehensive width analysis of the proposed confidence set, showing that the convergence rate of the diameter is adaptive to the unknown degree of instance-specific regularity. We apply the proposed method to several high-dimensional and irregular statistical problems.

Keywords

Honest inference

Adaptive inference

Irregular M-estimation

Non-standard asymptotics

Extremum estimators 

Main Sponsor

IMS