This paper compares the performance, measured in terms of bias, root mean squared error and computation time, of different estimators of the fixed effects dynamic panel data model extended to include endogenous interaction effects when T is small: (i) the bias corrected LSDV (BCLSDV) estimator based on Yu, De Jong and Lee (2008); (ii) the ML estimator based on Hsiao, Pesaran and Thamiscioglu (2002) and Bhargava and Sargan (1983) extended in this paper to include endogenous interaction effects; (iii) the GMM estimator based on Arrelano and Bond (1991) extended in this paper to include endogenous interaction effects: (iv) the ML estimator mixed with the BCLSDV parameter estimate of the endogenous interaction effects; and (v) the GMM estimator...
In this paper, we show that the order of magnitude of the finite sample bias of the GMMld(2) estimat...
This paper compares the performance of three recently proposed estimators for dynamic panel data mod...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
This paper compares the performance, measured in terms of bias, root mean squared error and computat...
†I am deeply grateful to Taku Yamamoto for his helpful and constructive comments. I also would like ...
Approximation formulae are developed for the bias of ordinary and generalized Least Squares Dummy Va...
This article compares the performance of three recently proposed estimators for dynamic panel data m...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
We extend three existing cross-sectional limited dependent variable (LDV) estimators, that allow for...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
The finite sample behavior is analyzed of particular least squares (LS) and a range of (generalized)...
This paper considers the estimation methods for dynamic panel data (DPD) models with fixed effects w...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
(Preliminary. Do not quote without permission) In this paper, I consider the estimation of non-linea...
Through Monte Carlo experiments the small sample behavior is examined of various inference technique...
In this paper, we show that the order of magnitude of the finite sample bias of the GMMld(2) estimat...
This paper compares the performance of three recently proposed estimators for dynamic panel data mod...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
This paper compares the performance, measured in terms of bias, root mean squared error and computat...
†I am deeply grateful to Taku Yamamoto for his helpful and constructive comments. I also would like ...
Approximation formulae are developed for the bias of ordinary and generalized Least Squares Dummy Va...
This article compares the performance of three recently proposed estimators for dynamic panel data m...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
We extend three existing cross-sectional limited dependent variable (LDV) estimators, that allow for...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
The finite sample behavior is analyzed of particular least squares (LS) and a range of (generalized)...
This paper considers the estimation methods for dynamic panel data (DPD) models with fixed effects w...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
(Preliminary. Do not quote without permission) In this paper, I consider the estimation of non-linea...
Through Monte Carlo experiments the small sample behavior is examined of various inference technique...
In this paper, we show that the order of magnitude of the finite sample bias of the GMMld(2) estimat...
This paper compares the performance of three recently proposed estimators for dynamic panel data mod...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...