The detection of spatial clusters and outliers is critical to a number of spatial data analysis techniques. Many techniques embed spatial clustering components with the aim of exploring spatial variability and patterns in a data set, caused by the spatial association that generally affects most spatial data. A frontier challenge in spatial data analysis is to extend techniques—originally designed for univariate analysis—to a multivariate context, in order to be able to cope with the increasing complexity and variety of modern spatial data. This article proposes an exploratory procedure to detect and classify clusters and outliers in a multivariate spatial data set. Cluster and outlier detection relies on recently introduced multivariate ext...
Researchers have been using clustering algorithms for many years to group similar observations based...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...
The detection of spatial clusters and outliers is critical to a number of spatial data analysis tech...
Outlier detection techniques in spatial data should allow to identify two types of outliers: global...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Multivariate spatial data are geographical locations on which non spatial variables are measured. S...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
We examine relationships between the problem of robust estimation of multivariate location and shape...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
A spatial outlier is a spatially referenced object whose non spatial attribute value is significantl...
"In this paper we focus on the analysis of functional data spatially correlated.. Especially we intr...
Local Moran and local G-statistic are commonly used to identify high-value (hot spot) and low-value ...
Outlier detection is often a key task in a statistical analysis and helps guard against poor decisio...
Researchers have been using clustering algorithms for many years to group similar observations based...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...
The detection of spatial clusters and outliers is critical to a number of spatial data analysis tech...
Outlier detection techniques in spatial data should allow to identify two types of outliers: global...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Multivariate spatial data are geographical locations on which non spatial variables are measured. S...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
We examine relationships between the problem of robust estimation of multivariate location and shape...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
A spatial outlier is a spatially referenced object whose non spatial attribute value is significantl...
"In this paper we focus on the analysis of functional data spatially correlated.. Especially we intr...
Local Moran and local G-statistic are commonly used to identify high-value (hot spot) and low-value ...
Outlier detection is often a key task in a statistical analysis and helps guard against poor decisio...
Researchers have been using clustering algorithms for many years to group similar observations based...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
Overlaying maps using a desktop GIS is often the first step of a multivariate spatial analysis. The ...