Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” can be defined in many different dimensions. In a cross-section of U.S. regions, it can be defined using physical distance, cultural similarity, ecological similarity, or using frequency and intensity of interaction, such as migration or commuting relationships. Autocorrelation of regression residuals presents well-known problems in least-squares estimation, but autocorrelation also provides useful information for exploratory data analysis and model specification. The paper shows that autocorrelation is widespread in U.S. regional data
<p>Shaded areas represent the 95% confidence interval obtained through random shuffling (1000 times)...
U.S. Commuting Zones (CZs) are an aggregation of county-level data that researchers commonly use to ...
Aim Spatial autocorrelation in ecological data can inflate Type I errors in statistical analyses. Th...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate” can...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Example data and software to calculate the spatial autocorrelation metric Ir. Companion to Landscape...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Spatial autocorrelation is an assessment of the correlation between two random variables which descr...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
In several land use models statistical methods are being used to analyse spatial data. Land use driv...
Dow and Eff recently reported high levels of network autocorrelation for over eleven hundred and fif...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
<p>Shaded areas represent the 95% confidence interval obtained through random shuffling (1000 times)...
U.S. Commuting Zones (CZs) are an aggregation of county-level data that researchers commonly use to ...
Aim Spatial autocorrelation in ecological data can inflate Type I errors in statistical analyses. Th...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate” can...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Example data and software to calculate the spatial autocorrelation metric Ir. Companion to Landscape...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Spatial autocorrelation is an assessment of the correlation between two random variables which descr...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
In several land use models statistical methods are being used to analyse spatial data. Land use driv...
Dow and Eff recently reported high levels of network autocorrelation for over eleven hundred and fif...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
<p>Shaded areas represent the 95% confidence interval obtained through random shuffling (1000 times)...
U.S. Commuting Zones (CZs) are an aggregation of county-level data that researchers commonly use to ...
Aim Spatial autocorrelation in ecological data can inflate Type I errors in statistical analyses. Th...