Spatial autocorrelation is an assessment of the correlation between two random variables which describe the same aspect of the phenomenon under study, referred to two locations of the domain. The suffix “auto” is justified since in some sense the spatial autocorrelation quantifies the correlation of a variable with itself over space. However, the expressions “spatial autocorrelation” and “spatial correlation” are used interchangeably in literature. Most of the theoretical results of classical statistics consider the observed values, as independent realizations of a random variable: this assumption makes the statistical theory much easier. Unfortunately, this last hypothesis cannot be valid if the observations are measured in space (or in ti...
This article introduces measures to quantify spatial autocorrelation for vectors. In contrast to sca...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
To date a clear, simple, and concise definition of spatial autocorrelation has eluded the literature...
To date a clear, simple, and concise definition of spatial autocorrelation has eluded the literature...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate” can...
The analysis of spatial distributions and the processes that produce and alter them is a central the...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
A number of spatial statistic measurements such as Moran's I and Geary's C can be used for spatial a...
Loftin and Ward introduce spatial autocorrelation as a way to take spatial interaction and spatial p...
This article introduces measures to quantify spatial autocorrelation for vectors. In contrast to sca...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...
Spatial autocorrelation may be defined as the relationship among values of a single variable that co...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
To date a clear, simple, and concise definition of spatial autocorrelation has eluded the literature...
To date a clear, simple, and concise definition of spatial autocorrelation has eluded the literature...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
sampling dynamic populations in space and time. / Ecography 27: 767/775. The estimation of spatial ...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate” can...
The analysis of spatial distributions and the processes that produce and alter them is a central the...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
Positive autocorrelation implies that proximate observations take on similar values. “Proximate ” ca...
A number of spatial statistic measurements such as Moran's I and Geary's C can be used for spatial a...
Loftin and Ward introduce spatial autocorrelation as a way to take spatial interaction and spatial p...
This article introduces measures to quantify spatial autocorrelation for vectors. In contrast to sca...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...
Cliff and Ord (1969), published forty years ago, marked a turning point in the treatment of spatial ...