Clustering can be applied to many fields including data mining, statistical data analysis, pattern recognition, image processing etc. In the past decade, a lot of efficient and effective new clustering algorithms have been proposed, in which famous algorithms contributed from the database community are CLARANS, BIRCH, DBSCAN, CURE, STING, CLIGUE and WaveCluster. All these algorithms try to challenge the problem of handling huge amount of data in large-scale databases. In this paper, we propose a scalable and visualization-oriented clustering algorithm for exploratory spatial analysis (CAESA). The context of our research is 2D spatial data analysis, but the method can be extended to higher dimensional space. Here, “Scalable ” means our algor...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...
Clustering algorithms are data attractive for the last class identification in spatial databases. Th...
Clustering of massive data is an important analysis tool but also challenging since the data often d...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
This paper discusses visualization and analysis issues as datasets grow towards very large sizes, an...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Clustering algorithms are attractive for the task of class iden-tification in spatial databases. How...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
Clustering analysis is a significant technique in various fields, including unsupervised machine lea...
AbstractIn this work the topic of applying clustering as a knowledge extraction method from real-wor...
With the rapid increase of data in many areas, clustering on large datasets has become an important ...
In our time people and devices constantly generate data. User activity generates data about needs an...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...
Clustering algorithms are data attractive for the last class identification in spatial databases. Th...
Clustering of massive data is an important analysis tool but also challenging since the data often d...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
This paper discusses visualization and analysis issues as datasets grow towards very large sizes, an...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Exploratory spatial analysis is increasingly necessary as larger spatial data is managed in electro-...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Clustering algorithms are attractive for the task of class iden-tification in spatial databases. How...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
Clustering analysis is a significant technique in various fields, including unsupervised machine lea...
AbstractIn this work the topic of applying clustering as a knowledge extraction method from real-wor...
With the rapid increase of data in many areas, clustering on large datasets has become an important ...
In our time people and devices constantly generate data. User activity generates data about needs an...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...
Clustering algorithms are data attractive for the last class identification in spatial databases. Th...