Historical persistence studies and other regressions using spatial data commonly have severely inflated t statistics, and different standard error adjustments to correct for this return markedly different estimates. This paper proposes a simple randomization inference procedure where the significance level of an explanatory variable is measured by its ability to outperform synthetic noise with the same estimated spatial structure. Spatial noise, in other words, acts as a treatment randomization in an artificial experiment based on correlated observational data. Combined with Müller and Watson (2021), randomization gives a way to estimate credible confidence intervals for spatial regressions. The performance of twenty persistence studies rel...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
This thesis discusses two aspects of spatial statistics: sampling and prediction. In spatial statist...
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...
This article establishes a unified randomization significance testing framework upon which various l...
This is the accepted manuscript of an article published by Wiley. The manuscript does not include fi...
Randomized controlled trials have become the gold standard for impact evaluation since they provide ...
The effect of the persistence of spatial patterns on the performance of space-time sampling designs ...
We consider testing the null hypothesis of no spatial autocorrelation against the alternative of fir...
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...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
Ramsey’s regression specification error test (RESET) is thought to be robust to spatial correlation....
We present statistical tests for departures from random expectation in spatial memory tasks. We cons...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
This thesis discusses two aspects of spatial statistics: sampling and prediction. In spatial statist...
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...
This article establishes a unified randomization significance testing framework upon which various l...
This is the accepted manuscript of an article published by Wiley. The manuscript does not include fi...
Randomized controlled trials have become the gold standard for impact evaluation since they provide ...
The effect of the persistence of spatial patterns on the performance of space-time sampling designs ...
We consider testing the null hypothesis of no spatial autocorrelation against the alternative of fir...
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...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
Ramsey’s regression specification error test (RESET) is thought to be robust to spatial correlation....
We present statistical tests for departures from random expectation in spatial memory tasks. We cons...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
This thesis discusses two aspects of spatial statistics: sampling and prediction. In spatial statist...