Nonlinear and nonparametric regression and instrumental variables Academic Article uri icon

abstract

  • We consider regression when the predictor is measured with error and an instrumental variable (IV) is available. The regression function can be modeled linearly, nonlinearly, or nonparametrically. Our major new result shows that the regression function and all parameters in the measurement error model are identified under relatively weak conditions, much weaker than previously known to imply identifiability. In addition, we exploit a characterization of the IV estimator as a classical "correction for attenuation" method based on a particular estimate of the variance of the measurement error. This estimate of the measurement error variance allows us to construct functional nonparametric regression estimators making no assumptions about the distribution of the unobserved predictor and structural estimators that use parametric assumptions about this distribution. The functional estimators uses simulation extrapolation or deconvolution kernels and the structural method uses Bayesian Markov chain Monte Carlo. The Bayesian estimator is found to significantly outperform the functional approach.

published proceedings

  • JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION

author list (cited authors)

  • Carroll, R. J., Ruppert, D., Crainiceanu, C. M., Tosteson, T. D., & Karagas, M. R.

citation count

  • 44

complete list of authors

  • Carroll, RJ||Ruppert, D||Crainiceanu, CM||Tosteson, TD||Karagas, MR

publication date

  • September 2004