EL inference for partially identified models: Large deviations optimality and bootstrap validity

Abstract

This paper addresses the issue of optimal inference for parameters that are partially identified in models with moment inequalities. There currently exists a variety of inferential methods for use in this setting. However, the question of choosing optimally among contending procedures is unresolved. In this paper, I first consider a canonical large deviations criterion for optimality and show that inference based on the empirical likelihood ratio statistic is optimal. Second, I introduce a new empirical likelihood bootstrap that provides a valid resampling method for moment inequality models and overcomes the implementation challenges that arise as a result of non-pivotal limit distributions. Lastly, I analyze the finite sample properties of the proposed framework using Monte Carlo simulations. The simulation results are encouraging.Empirical likelihood Partial identification Large deviations Empirical likelihood bootstrap Asymptotic optimality

    Similar works

    Full text

    thumbnail-image

    Available Versions

    Last time updated on 06/07/2012