It has been established that spatial clustering patterns are scale-dependent. However, scale is still not explicitly handled in existing methods to detect clusters in spatial points; thus, users are often puzzled by the varied clustering results obtained by different spatial clustering methods and/or parameters. To handle the effect of scale on the cluster detection of spatial points, two kinds of scales are first specified in this study: scale of data and scale of analysis. These two kinds of scales are embodied by a set of three indictors: data resolution, spatial extent, and analysis resolution. Further, a scale-driven clustering model with these three scale indicators as parameters is statistically constructed based on the Natural Princ...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Abstract--Estimation theory is used to derive a new approach to the clustering problem. The new meth...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
Considering the complexity and discontinuity of spatial data distribution, a clustering algorithm of...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
Spatial point pattern analysis is commonly used in ecology to examine the spatial distribution of in...
Spatial point pattern analysis is commonly used in ecology to examine the spatial distribution of in...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Abstract--Estimation theory is used to derive a new approach to the clustering problem. The new meth...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
PolyU Library Call No.: [THS] LG51 .H577P LSGI 2015 Liuxv, 194 pages :illustrations (some color) ;30...
Considering the complexity and discontinuity of spatial data distribution, a clustering algorithm of...
The spatial scan statistic method has been widely used for detecting disease clusters. Its results m...
Spatial cluster analysis is a uniquely interdisciplinary endeavour, and so it is important to commun...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
The detection of so-called hot-spots in point datasets is important to generalize the spatial struct...
Spatial point pattern analysis is commonly used in ecology to examine the spatial distribution of in...
Spatial point pattern analysis is commonly used in ecology to examine the spatial distribution of in...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Maps are used in many application areas to support the visualization and analysis of geo-referenced ...
Abstract--Estimation theory is used to derive a new approach to the clustering problem. The new meth...