POSTERIOR CONSISTENCY OF NONPARAMETRIC CONDITIONAL MOMENT RESTRICTED MODELS

Citation
Yuan Liao et Wenxin Jiang, POSTERIOR CONSISTENCY OF NONPARAMETRIC CONDITIONAL MOMENT RESTRICTED MODELS, Annals of statistics , 39(6), 2011, pp. 3003-3031
Journal title
ISSN journal
00905364
Volume
39
Issue
6
Year of publication
2011
Pages
3003 - 3031
Database
ACNP
SICI code
Abstract
This paper addresses the estimation of the nonparametric conditional moment restricted model that involves an infinite-dimensional parameter go. We estimate it in a quasi-Bayesian way, based on the limited information likelihood, and investigate the impact of three types of priors on the posterior consistency: (i) truncated prior (priors supported on a bounded set), (ii) thintail prior (a prior that has very thin tail outside a growing bounded set) and (iii) normal prior with nonshrinking variance. In addition, go is allowed to be only partially identified in the frequentist sense, and the parameter space does not need to be compact. The posterior is regularized using a slowly growing sieve dimension, and it is shown that the posterior converges to any small neighborhood of the identified region. We then apply our results to the nonparametric instrumental regression model. Finally, the posterior consistency using a random sieve dimension parameter is studied.