Published December 14, 2015 | Version v1
Journal article

Estimating dynamic discrete-choice games of incomplete information

  • 1. Harvard University
  • 2. University of Chicago

Description

We investigate the estimation of models of dynamic discrete-choice games of incomplete information, formulating the maximum-likelihood estimation exercise as a constrained optimization problem that can be solved using state-of-the-art constrained optimization solvers. Under the assumption that only one equilibrium is played in the data, our approach avoids repeatedly solving the dynamic game or finding all equilibria for each candidate vector of the structural parameters. We conduct Monte Carlo experiments to investigate the numerical performance and finite-sample properties of the constrained optimization approach for computing the maximum-likelihood estimator, the two-step pseudo-maximum-likelihood estimator, and the nested pseudo-likelihood estimator, implemented by both the nested pseudo-likelihood algorithm and a modified nested pseudo-likelihood algorithm.

Additional details

Identifiers

DOI
10.3982/qe430
Other
oai:uchicago.tind.io:16264

Funding

University of Chicago
Robert King Steel Faculty Fellowship

UChicago Information

Division(s)
Booth School of Business
Department(s)
Operations Management