This paper presents an extension of instrumental variable estimation to nonlinear regression models. For the linear model, the extended estimator is equivalent to the two-stage least squares estimator. The extended estimator is consistent for an important class of nonlinear models, including the logistic model, under relatively weak assumptions on the distribution of the measurement error. An example and simulation study are presented for the logistic regression model. The simulations suggest the estimator is reasonably efficient.
Jeffrey S. BuzasLeonard A. Stefanski
Qi WangLichun WangLiqun WangLiqun WangLiqun Wang
Leonard A. StefanskiJeffrey S. Buzas
Jeffrey S. BuzasLeonard A. Stefanski