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OLS-based estimation of the disturbance variance under spatial autocorrelation (2006)

Abstract
We investigate the OLS-based estimator s^2 of the disturbance variance in the standard linear regression model with cross section data when the disturbances are homoskedastic, but spatially correlated. For the most popular model of spatially autoregressive disturbances, we show that s^2 can be severely biased in finite samples, but is asymptotically unbiased and consistent for most types of spatial weighting matrices as sample size increases.

Publication details
Download http://hdl.handle.net/2003/23077
Repository Universität Dortmund - Eldorado ()
Keywords Regression, Spatial error correlation, Bias, Variance, 004
Type Text, report
Language English
Relation HT014602036