Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-magnetic media. We propose an exploratory method that reveals a robust clustering hierarchy from two-dimensional point data. Our approach uses the Delaunay diagram to incorporate spatial proximity. It does not require prior knowledge about the data set, nor does it require preconditions. Multi-level clusters are successfully discovered by this new method in only O(nlogn) time, where n is the size of the data set. The efficiency of our method allows us to construct and display a new type of tree graph that facilitates understanding of the complex hierarchy of clusters. We show that clustering methods adopting a raster-like or vector-like repr...
Spatial clustering provides answers for “where?” and “when?” and evokes “why?” for further explorati...
Considering the complexity and discontinuity of spatial data distribution, a clustering algorithm of...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
In this paper, we propose an approach of clustering data in parallel coordinates through interactive...
In this paper, we propose an approach of clustering data in paral-lel coordinates through interactiv...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Clustering can be applied to many fields including data mining, statistical data analysis, pattern r...
We develop a linear time method for transforming clusters of 2D-point data into area data while iden...
In this paper, a novel clustering algorithm is proposed to address the clustering problem within bot...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
Abstract — In this paper, we re-consider the problem of mapping a high-dimensional data set into a l...
Minimizing the need for user-specified arguments results in less costly Geographical Data Mining. Fo...
Spatial clustering provides answers for “where?” and “when?” and evokes “why?” for further explorati...
Considering the complexity and discontinuity of spatial data distribution, a clustering algorithm of...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
In this paper, we propose an approach of clustering data in parallel coordinates through interactive...
In this paper, we propose an approach of clustering data in paral-lel coordinates through interactiv...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Clustering can be applied to many fields including data mining, statistical data analysis, pattern r...
We develop a linear time method for transforming clusters of 2D-point data into area data while iden...
In this paper, a novel clustering algorithm is proposed to address the clustering problem within bot...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
Abstract — In this paper, we re-consider the problem of mapping a high-dimensional data set into a l...
Minimizing the need for user-specified arguments results in less costly Geographical Data Mining. Fo...
Spatial clustering provides answers for “where?” and “when?” and evokes “why?” for further explorati...
Considering the complexity and discontinuity of spatial data distribution, a clustering algorithm of...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...