Minimizing the need for user-specified arguments results in less costly Geographical Data Mining. For massive data sets, the need to find best-fit arguments in semi-automatic clustering is not the only concern, the manipulation of data to find arguments opposes the philosophy of ''let the data speak for themselves'' that underpins exploratory data analysis. Our new approach consists of effective and efficient methods for discovering cluster boundaries in point-data sets. Parameters are not specified by users. Rather, values for parameters are revealed from the proximity structures of Voronoi modeling, and thus, an algorithm, AUTOCLUST, calculates them from the Delunay Diagram. We detect clusters of different densities and sparse clusters ne...
Les travaux présentés et discutés dans cette thèse ont pour objectif de proposer plusieurs solutions...
Abstract- Gaining confidence that a clustering algorithm has produced meaningful results and not an ...
This paper introduces a strategy for clustering point clouds generated by a spatial point process. T...
Minimizing the need for user-specified arguments results in less costly Geographical Data Mining. Fo...
We develop a linear time method for transforming clusters of 2D-point data into area data while iden...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
A fundamental element of exploratory spatial data analysis is the discovery of clusters in a spatial...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
Establishing neighborhood relationships among data points is important for several data analysis app...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
AbstractClustering problems in a complex geographical setting are often required to incorporate the ...
Clustering spatial data is a well-known problem that has been extensively studied. Grouping similar ...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Gaining confidence that a clustering algorithm has produced meaningful results and not an accident o...
Les travaux présentés et discutés dans cette thèse ont pour objectif de proposer plusieurs solutions...
Abstract- Gaining confidence that a clustering algorithm has produced meaningful results and not an ...
This paper introduces a strategy for clustering point clouds generated by a spatial point process. T...
Minimizing the need for user-specified arguments results in less costly Geographical Data Mining. Fo...
We develop a linear time method for transforming clusters of 2D-point data into area data while iden...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
A fundamental element of exploratory spatial data analysis is the discovery of clusters in a spatial...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
Establishing neighborhood relationships among data points is important for several data analysis app...
When two spatial point processes are overlaid, the one with the higher rate is shown as clustered po...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
AbstractClustering problems in a complex geographical setting are often required to incorporate the ...
Clustering spatial data is a well-known problem that has been extensively studied. Grouping similar ...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
Gaining confidence that a clustering algorithm has produced meaningful results and not an accident o...
Les travaux présentés et discutés dans cette thèse ont pour objectif de proposer plusieurs solutions...
Abstract- Gaining confidence that a clustering algorithm has produced meaningful results and not an ...
This paper introduces a strategy for clustering point clouds generated by a spatial point process. T...