Bayesian nonparametric instrumental variable regression based on penalized splines and Dirichlet process mixtures
Fecha
2012Autor
Wiesenfarth, Manuel
Hisgen, Carlos Matías
Kneib, Thomas
Cadarso Suárez, Carmen
Metadatos
Mostrar el registro completo del ítemResumen
We propose a Bayesian nonparametric instrumental variable approach that allows
us to correct for endogeneity bias in regression models where the covariate effects
enter with unknown functional form. Bias correction relies on a simultaneous equations specification with flexible modeling of the joint error distribution implemented
via a Dirichlet process mixture prior. Both the structural and instrumental variable
equation are specified in terms of additive predictors comprising penalized splines
for nonlinear effects of continuous covariates. Inference is fully Bayesian, employing
efficient Markov Chain Monte Carlo simulation techniques. The resulting posterior
samples do not only provide us with point estimates, but allow us to construct
simultaneous credible bands for the nonparametric effects, including data-driven
smoothing parameter selection. In addition, improved robustness properties are
achieved due to the flexible error distribution specification. Both these features are
extremely challenging in the classical framework, making the Bayesian one advantageous. In simulations, we investigate small sample properties and an investigation
of the effect of class size on student performance in Israel provides an illustration
of the proposed approach which is implemented in an R package bayesIV.
URI
https://www.econstor.eu/bitstream/10419/90568/1/CRC-PEG_DP_127.pdfhttp://repositorio.unne.edu.ar/handle/123456789/57160









