Online Program Home
  My Program

Abstract Details

Activity Number: 139 - Challenges and Advances in Statistical Inference for Problems with Nonregularity in the Era of Big Data
Type: Invited
Date/Time: Monday, July 31, 2017 : 10:30 AM to 12:20 PM
Sponsor: WNAR
Abstract #321894 View Presentation
Title: Local M-Estimation with Discontinuous Criterion for Dependent and Limited Observations
Author(s): Myung Hwan Seo* and Taisuke Otsu
Companies: SEOUL NATIONAL UNIVERSITY and London School of Economics
Keywords: Cube root asymptotics ; maximal inequality ; mixing process ; partial identification ; parameter dependent localization
Abstract:

This paper examines asymptotic properties of local M-estimators under three sets of high-level conditions. These conditions are sufficiently general to cover the minimum volume predictive region, conditional maximum score estimator for a panel data discrete choice model, and many other widely used estimators in statistics and econometrics. Specifically, they allow for discontinuous criterion functions of weakly dependent observations, which may be localized by kernel smoothing and contain nuisance parameters whose dimension may grow to infinity. Furthermore, the localization can occur around parameter values rather than around a fixed point and the observation may take limited values, which leads to set estimators. Our theory produces three different nonparametric cube root rates and enables valid inference for the local M-estimators, building on novel maximal inequalities for weakly dependent data. Our results include the standard cube root asymptotics as a special case. To illustrate the usefulness of our results, we verify our conditions for various examples such as the Hough transform estimator with diminishing bandwidth, maximum score-type set estimator, and many others.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2017 program

 
 
Copyright © American Statistical Association