Many interesting analysis problems (e.g. disease surveillance) would become more tractable if their spatio-temporal structure was better understood. Specifically, it would be helpful to be able to identify autocorrelation in space and time simultaneously. Some of the most commonly used measures of spatial association are LISA statistics, such as the Local Moran's I or the Getis-Ord Gi*; however, these have not been applied to the spatio-temporal case (including many time steps) because of computational limitations. We have implemented a spatio-temporal version of the Local Moran's I and claimed two advances: first, we exploit the fact that there are a limited number of topological relationships present in the data to make Monte Carlo's esti...
Spatial statistical analyses are often used to study the link between environmental factors and the ...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Disease mapping is an important statistical tool used by epidemiologists to assess geographic variat...
The detection of clustering structure in a point pattern is one of the major focus of attention in s...
Spatial autocorrelation is an assessment of the correlation between two random variables which descr...
The detection of clustering structure in a point pattern is one of the main focuses of attention in ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Moran’s Index is a statistic that measures spatial autocorrelation, quantifying the degree of disper...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
The Moran\u27s index is a statistic that measures spatial autocorrelation; it quantifies the degree ...
The spatial autocorrelation issue is now well established, and it is almost impossible to deal with ...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
[[abstract]]Global climate change and better transportation make infectious diseases spread much mor...
In this work, we extend the Local Indicators of Spatio-Temporal Association (LISTA) functions (Siino...
Spatial statistical analyses are often used to study the link between environmental factors and the ...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Disease mapping is an important statistical tool used by epidemiologists to assess geographic variat...
The detection of clustering structure in a point pattern is one of the major focus of attention in s...
Spatial autocorrelation is an assessment of the correlation between two random variables which descr...
The detection of clustering structure in a point pattern is one of the main focuses of attention in ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Moran’s Index is a statistic that measures spatial autocorrelation, quantifying the degree of disper...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
The Moran\u27s index is a statistic that measures spatial autocorrelation; it quantifies the degree ...
The spatial autocorrelation issue is now well established, and it is almost impossible to deal with ...
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to th...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
[[abstract]]Global climate change and better transportation make infectious diseases spread much mor...
In this work, we extend the Local Indicators of Spatio-Temporal Association (LISTA) functions (Siino...
Spatial statistical analyses are often used to study the link between environmental factors and the ...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Disease mapping is an important statistical tool used by epidemiologists to assess geographic variat...