Published December 7, 2023 | Version v1
Journal article Open

An Adversarial Approach to Structural Estimation

  • 1. University of Chicago
  • 2. New York University

Description

We propose a new simulation-based estimation method, adversarial estimation, for structural models. The estimator is formulated as the solution to a minimax problem between a generator (which generates simulated observations using the structural model) and a discriminator (which classifies whether an observation is simulated). The discriminator maximizes the accuracy of its classification while the generator minimizes it. We show that, with a sufficiently rich discriminator, the adversarial estimator attains parametric efficiency under correct specification and the parametric rate under misspecification. We advocate the use of a neural network as a discriminator that can exploit adaptivity properties and attain fast rates of convergence.

Data availability

The replication package for this paper is available at https://doi.org/10.5281/zenodo.8310266. The Journal checked the data and codes included in the package for their ability to reproduce the results in the paper and approved online appendices. Given the highly demanding nature of the algorithms, the reproducibility checks were run on a simplified version of the code, which is also available in the replication package.

Files

Adversarial-Approach-to-Structural-Estimation.pdf

Files (972.8 kB)

Name Size Download all
Article
md5:0cb355b6d2f3418e552841f2276f6a72
774.4 kB Preview Download
Supporting information
md5:a13bea690ff6e865812a9cc3865ecc7e
198.4 kB Preview Download

Additional details

Identifiers

DOI
10.3982/ECTA18707
Other
oai:uchicago.tind.io:10066

UChicago Information

Division(s)
Booth School of Business, Harris School of Public Policy Studies
Department(s)
Econometrics and Statistics, Harris School of Public Policy Studies Research Publications