A large literature on persistence finds that many modern outcomes strongly reflect characteristics of the same places in the distant past. However, alongside unusually high t statistics, these regressions display severe spatial auto-correlation in residuals, and the purpose of this paper is to examine whether these two properties might be connected. We start by running artificial regressions where both variables are spatial noise and find that, even for modest ranges of spatial correlation between points, t statistics become severely inflated leading to significance levels that are in error by several orders of magnitude. We analyse 27 persistence studies in leading journals and find that in most cases if we replace the main explanatory var...
It has now been more than two decades since Cliff and Ord (1972) and Hordijk (1974) applied the prin...
Regressions using data with known locations are increasingly used in empirical economics, and severa...
Purpose Spatial autocorrelation in regression residuals is a major issue for the modeller because it...
A large literature on persistence finds that many modern outcomes strongly reflect characteristics o...
A large literature on persistence finds that many modern outcomes strongly reflect characteristics o...
Historical persistence studies and other regressions using spatial data commonly have severely infla...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Ramsey’s regression specification error test (RESET) is thought to be robust to spatial correlation....
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
In regression analysis, model misspecification can produce spurious spatial correlation in the resid...
Estimation of fixed effects in spatial data sets can be challenging, as spatial autocorrelation can ...
This is the published version of an article published by the Ecological Society of America.The linea...
DR LEO 2009-12This paper derives several Lagrange Multiplier statistics and the corresponding<br />l...
discussions on this project. Any remaining errors are my own. Many theories in political science pre...
It has now been more than two decades since Cliff and Ord (1972) and Hordijk (1974) applied the prin...
Regressions using data with known locations are increasingly used in empirical economics, and severa...
Purpose Spatial autocorrelation in regression residuals is a major issue for the modeller because it...
A large literature on persistence finds that many modern outcomes strongly reflect characteristics o...
A large literature on persistence finds that many modern outcomes strongly reflect characteristics o...
Historical persistence studies and other regressions using spatial data commonly have severely infla...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Ramsey’s regression specification error test (RESET) is thought to be robust to spatial correlation....
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
In regression analysis, model misspecification can produce spurious spatial correlation in the resid...
Estimation of fixed effects in spatial data sets can be challenging, as spatial autocorrelation can ...
This is the published version of an article published by the Ecological Society of America.The linea...
DR LEO 2009-12This paper derives several Lagrange Multiplier statistics and the corresponding<br />l...
discussions on this project. Any remaining errors are my own. Many theories in political science pre...
It has now been more than two decades since Cliff and Ord (1972) and Hordijk (1974) applied the prin...
Regressions using data with known locations are increasingly used in empirical economics, and severa...
Purpose Spatial autocorrelation in regression residuals is a major issue for the modeller because it...