Confidence Intervals for Projections of Partially Identified Parameters
Hiroaki Kaido, Francesca Molinari, J\"org Stoye

TL;DR
This paper introduces a bootstrap-based method for constructing confidence intervals for partially identified parameters in moment (in)equality models, ensuring uniform coverage and computational efficiency.
Contribution
It develops a calibrated projection procedure with a novel optimization algorithm for accurate, fast confidence interval estimation in complex models.
Findings
Method controls asymptotic coverage uniformly.
Algorithm achieves rapid and accurate solutions.
Simulation shows improved performance over existing methods.
Abstract
We propose a bootstrap-based calibrated projection procedure to build confidence intervals for single components and for smooth functions of a partially identified parameter vector in moment (in)equality models. The method controls asymptotic coverage uniformly over a large class of data generating processes. The extreme points of the calibrated projection confidence interval are obtained by extremizing the value of the function of interest subject to a proper relaxation of studentized sample analogs of the moment (in)equality conditions. The degree of relaxation, or critical level, is calibrated so that the function of theta, not theta itself, is uniformly asymptotically covered with prespecified probability. This calibration is based on repeatedly checking feasibility of linear programming problems, rendering it computationally attractive. Nonetheless, the program defining an…
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