QUASI-BAYESIAN ANALYSIS OF NONPARAMETRIC INSTRUMENTAL VARIABLES MODELS

Authors
Citation
Kengo Kato, QUASI-BAYESIAN ANALYSIS OF NONPARAMETRIC INSTRUMENTAL VARIABLES MODELS, Annals of statistics , 41(5), 2013, pp. 2359-2390
Journal title
ISSN journal
00905364
Volume
41
Issue
5
Year of publication
2013
Pages
2359 - 2390
Database
ACNP
SICI code
Abstract
This paper aims at developing a quasi-Bayesian analysis of the nonparametric instrumental variables model, with a focus on the asymptotic properties of quasi-posterior distributions. In this paper, instead of assuming a distributional assumption on the data generating process, we consider a quasilikelihood induced from the conditional moment restriction, and put priors on the function-valued parameter. We call the resulting posterior quasi-posterior, which corresponds to "Gibbs posterior" in the literature. Here we focus on priors constructed on slowly growing finite-dimensional sieves. We derive rates of contraction and a nonparametric Bernstein.von Mises type result for the quasi-posterior distribution, and rates of convergence for the quasi-Bayes estimator defined by the posterior expectation. We show that, with priors suitably chosen, the quasi-posterior distribution (the quasi-Bayes estimator) attains the minimax optimal rate of contraction (convergence, resp.). These results greatly sharpen the previous related work.