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<title>Documentos de trabajo</title>
<link href="http://repositorio.unne.edu.ar/handle/123456789/64" rel="alternate"/>
<subtitle/>
<id>http://repositorio.unne.edu.ar/handle/123456789/64</id>
<updated>2026-04-10T15:39:36Z</updated>
<dc:date>2026-04-10T15:39:36Z</dc:date>
<entry>
<title>Bayesian nonparametric instrumental variable&#13;
regression based on penalized splines and Dirichlet&#13;
process mixtures</title>
<link href="http://repositorio.unne.edu.ar/handle/123456789/57160" rel="alternate"/>
<author>
<name>Wiesenfarth, Manuel</name>
</author>
<author>
<name>Hisgen, Carlos Matías</name>
</author>
<author>
<name>Kneib, Thomas</name>
</author>
<author>
<name>Cadarso Suárez, Carmen</name>
</author>
<id>http://repositorio.unne.edu.ar/handle/123456789/57160</id>
<updated>2025-10-20T12:18:46Z</updated>
<published>2012-01-01T00:00:00Z</published>
<summary type="text">Bayesian nonparametric instrumental variable&#13;
regression based on penalized splines and Dirichlet&#13;
process mixtures
Wiesenfarth, Manuel; Hisgen, Carlos Matías; Kneib, Thomas; Cadarso Suárez, Carmen
We propose a Bayesian nonparametric instrumental variable approach that allows&#13;
us to correct for endogeneity bias in regression models where the covariate effects&#13;
enter with unknown functional form. Bias correction relies on a simultaneous equations specification with flexible modeling of the joint error distribution implemented&#13;
via a Dirichlet process mixture prior. Both the structural and instrumental variable&#13;
equation are specified in terms of additive predictors comprising penalized splines&#13;
for nonlinear effects of continuous covariates. Inference is fully Bayesian, employing&#13;
efficient Markov Chain Monte Carlo simulation techniques. The resulting posterior&#13;
samples do not only provide us with point estimates, but allow us to construct&#13;
simultaneous credible bands for the nonparametric effects, including data-driven&#13;
smoothing parameter selection. In addition, improved robustness properties are&#13;
achieved due to the flexible error distribution specification. Both these features are&#13;
extremely challenging in the classical framework, making the Bayesian one advantageous. In simulations, we investigate small sample properties and an investigation&#13;
of the effect of class size on student performance in Israel provides an illustration&#13;
of the proposed approach which is implemented in an R package bayesIV.
</summary>
<dc:date>2012-01-01T00:00:00Z</dc:date>
</entry>
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