Non-Asymptotic Inference in a Class of Optimization Problems

05/16/2019
by   Joel Horowitz, et al.
0

This paper describes a method for carrying out non-asymptotic inference on partially identified parameters that are solutions to a class of optimization problems. The optimization problems arise in applications in which grouped data are used for estimation of a model's structural parameters. The parameters are characterized by restrictions that involve the population means of observed random variables in addition to the structural parameters of interest. Inference consists of finding confidence intervals for the structural parameters. Our method is non-asymptotic in the sense that it provides a finite-sample bound on the difference between the true and nominal probabilities with which a confidence interval contains the true but unknown value of a parameter. We contrast our method with an alternative non-asymptotic method based on the median-of-means estimator of Minsker (2015). The results of Monte Carlo experiments and an empirical example illustrate the usefulness of our method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/25/2020

Hybrid Confidence Intervals for Informative Uniform Asymptotic Inference After Model Selection

I propose a new type of confidence interval for correct asymptotic infer...
research
10/24/2017

Calibrated Projection in MATLAB: Users' Manual

We present the calibrated-projection MATLAB package implementing the met...
research
12/07/2017

Asymptotic coverage probabilities of bootstrap percentile confidence intervals for constrained parameters

The asymptotic behaviour of the commonly used bootstrap percentile confi...
research
06/11/2021

Asymptotic Properties of Monte Carlo Methods in Elliptic PDE-Constrained Optimization under Uncertainty

Monte Carlo approximations for random linear elliptic PDE constrained op...
research
09/21/2018

Analytic inference in finite population framework via resampling

The aim of this paper is to provide a resampling technique that allows u...
research
02/12/2005

Decomposable Problems, Niching, and Scalability of Multiobjective Estimation of Distribution Algorithms

The paper analyzes the scalability of multiobjective estimation of distr...
research
05/28/2023

Pretest estimation in combining probability and non-probability samples

Multiple heterogeneous data sources are becoming increasingly available ...

Please sign up or login with your details

Forgot password? Click here to reset