TY - JOUR
T1 - Estimation of higher-order spatial autoregressive cross-section models with heteroscedastic disturbances
AU - Badinger, Harald
AU - Egger, Peter
PY - 2011/3
Y1 - 2011/3
N2 - This paper generalizes the two-step approach to estimating a first-order spatial autoregressive model with spatial autoregressive disturbances (SARAR(1,1)) in a cross-section with heteroscedastic innovations by Kelejian and Prucha to the case of spatial autoregressive models with spatial autoregressive disturbances of arbitrary (finite) order (SARAR(R,S)). We derive a generalized moments (GM) estimation procedure of the spatial regressive parameters of the disturbance process and a generalized two-stage least squares estimator for the regression parameters of the model, prove consistency of proposed estimators thereof, and establish their (joint) asymptotic distribution. Monte Carlo evidence suggests that the estimation procedure performs reasonably well in small samples and that - apart from being of interest in itself - a proper specification of the spatial regressive disturbance process is also crucial for obtaining consistent estimates of the variance-covariance matrix used in the generalized least squares estimation.
AB - This paper generalizes the two-step approach to estimating a first-order spatial autoregressive model with spatial autoregressive disturbances (SARAR(1,1)) in a cross-section with heteroscedastic innovations by Kelejian and Prucha to the case of spatial autoregressive models with spatial autoregressive disturbances of arbitrary (finite) order (SARAR(R,S)). We derive a generalized moments (GM) estimation procedure of the spatial regressive parameters of the disturbance process and a generalized two-stage least squares estimator for the regression parameters of the model, prove consistency of proposed estimators thereof, and establish their (joint) asymptotic distribution. Monte Carlo evidence suggests that the estimation procedure performs reasonably well in small samples and that - apart from being of interest in itself - a proper specification of the spatial regressive disturbance process is also crucial for obtaining consistent estimates of the variance-covariance matrix used in the generalized least squares estimation.
KW - Asymptotics
KW - Generalized moments estimation
KW - Heteroscedasticity
KW - Higher-order spatial dependence
KW - Two-stage least squares
UR - http://www.scopus.com/inward/record.url?scp=79952170025&partnerID=8YFLogxK
U2 - 10.1111/j.1435-5957.2010.00323.x
DO - 10.1111/j.1435-5957.2010.00323.x
M3 - Journal article
AN - SCOPUS:79952170025
SN - 1056-8190
VL - 90
SP - 213
EP - 235
JO - Papers in Regional Science
JF - Papers in Regional Science
IS - 1
ER -