Econometrica: Nov, 2018, Volume 86, Issue 6
Monte Carlo Confidence Sets for Identified Sets
https://doi.org/10.3982/ECTA14525
p. 1965-2018
Xiaohong Chen, Timothy M. Christensen, Elie Tamer
It is generally difficult to know whether the parameters in nonlinear econometric models are pointâidentified. We provide computationally attractive procedures to construct confidence sets (CSs) for identified sets of the full parameter vector and of subvectors in models defined through a likelihood or a vector of moment equalities or inequalities. The CSs are based on level sets of âoptimalâ criterion functions (such as likelihoods, optimallyâweighted or continuouslyâupdated GMM criterions). The level sets are constructed using cutoffs that are computed via Monte Carlo (MC) simulations from the quasiâposterior distribution of the criterion. We establish new Bernsteinâvon Mises (or Bayesian Wilks) type theorems for the quasiâposterior distributions of the quasiâlikelihood ratio (QLR) and profile QLR in partiallyâidentified models. These results imply that our MC CSs have exact asymptotic frequentist coverage for identified sets of full parameters and of subvectors in partiallyâidentified regular models, and have valid but potentially conservative coverage in models whose local tangent spaces are convex cones. Further, our MC CSs for identified sets of subvectors are shown to have exact asymptotic coverage in models with singularities. We provide local power properties and uniform validity of our CSs over classes of DGPs that include pointâ and partiallyâidentified models. Finally, we present two simulation experiments and two empirical examples: an airline entry game and a model of trade flows.
Supplemental Material
Supplement to "Monte Carlo Confidence Sets for Identified Sets"
This Online Supplemental Material consists of the following sections:
E. Verification of main conditions for uniformity in examples
F. Proofs of all the results in the main text and additional results
View pdf
Supplement to "Monte Carlo Confidence Sets for Identified Sets"
This zip file contains the replication files for the manuscript. It also contains an appendix with additional results for the simulations and applications.
View zip