Abstract

In this paper, we explore the k-class estimator in high-dimensional linear models with potential endogeneity issues which are very common in empirical economics studies. K-class estimator has the advantage of incorporating many popular estimators such as the OLS estimator, two stage least squares (2SLS) estimator, limited information maximum likelihood (LIML) estimator, etc., as k takes on different values. Our main innovations are: 1) In the newly proposed high-dimensional k-class estimator, we allow the value of k (hence the level of endogeneity) to be determined by the data. Therefore, our method is very useful in empirical studies where the researcher do not know the severity of endogeneity or the importance of variables in a very large pool of candidate covariates. 2) In this paper, the adaptive LASSO method is incorporated into the generalized k-class estimation for variable selection and coefficient estimation in both the structural and reduced form equations. We show that the adaptive LASSO type k-class estimator has oracle properties. In simulation studies, we show that our new estimator can choose the optimal k value as well as achieving the minimum MSE among a set of popular estimators in finite samples where the number of potential endogenous variable is large.

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