TY - JOUR
T1 - Linear programming-based estimators in simple linear regression
AU - Preve, Daniel
AU - Medeiros, Marcelo C.
N1 - Funding Information:
We are grateful to conference participants at the Singapore Econometrics Study Group Meeting (2009, Singapore) for their comments and suggestions. We also wish to thank Michael McAleer and two referees for very helpful comments. All remaining errors are our own. The first author gratefully acknowledges partial research support from the Jan Wallander and Tom Hedelius Research Foundation (grant P 2006-0166:1 ) and the Sim Kee Boon Institute for Financial Economics at Singapore Management University . The second author wish to thank CNPq/Brazil for partial financial support.
PY - 2011/11/3
Y1 - 2011/11/3
N2 - In this paper we introduce a linear programming estimator (LPE) for the slope parameter in a constrained linear regression model with a single regressor. The LPE is interesting because it can be superconsistent in the presence of an endogenous regressor and, hence, preferable to the ordinary least squares estimator (LSE). Two different cases are considered as we investigate the statistical properties of the LPE. In the first case, the regressor is assumed to be fixed in repeated samples. In the second, the regressor is stochastic and potentially endogenous. For both cases the strong consistency and exact finite-sample distribution of the LPE is established. Conditions under which the LPE is consistent in the presence of serially correlated, heteroskedastic errors are also given. Finally, we describe how the LPE can be extended to the case with multiple regressors and conjecture that the extended estimator is consistent under conditions analogous to the ones given herein. Finite-sample properties of the LPE and extended LPE in comparison to the LSE and instrumental variable estimator (IVE) are investigated in a simulation study. One advantage of the LPE is that it does not require an instrument.
AB - In this paper we introduce a linear programming estimator (LPE) for the slope parameter in a constrained linear regression model with a single regressor. The LPE is interesting because it can be superconsistent in the presence of an endogenous regressor and, hence, preferable to the ordinary least squares estimator (LSE). Two different cases are considered as we investigate the statistical properties of the LPE. In the first case, the regressor is assumed to be fixed in repeated samples. In the second, the regressor is stochastic and potentially endogenous. For both cases the strong consistency and exact finite-sample distribution of the LPE is established. Conditions under which the LPE is consistent in the presence of serially correlated, heteroskedastic errors are also given. Finally, we describe how the LPE can be extended to the case with multiple regressors and conjecture that the extended estimator is consistent under conditions analogous to the ones given herein. Finite-sample properties of the LPE and extended LPE in comparison to the LSE and instrumental variable estimator (IVE) are investigated in a simulation study. One advantage of the LPE is that it does not require an instrument.
KW - Endogeneity
KW - Exact distribution
KW - Linear programming estimator
KW - Linear regression
KW - Quasi-maximum likelihood estimator
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U2 - 10.1016/j.jeconom.2011.05.011
DO - 10.1016/j.jeconom.2011.05.011
M3 - Article
AN - SCOPUS:80053307804
SN - 0304-4076
VL - 165
SP - 128
EP - 136
JO - Journal of Econometrics
JF - Journal of Econometrics
IS - 1
ER -