Cluster analysis plays a significant role regarding automating such a knowledge discovery process in spatial data mining. A good clustering algorithm supports two essential conditions, namely high intra-cluster similarity and low inter-cluster similarity. Maximized intra-cluster/within-cluster similarity produces low distances between data points inside the same cluster. However, minimized inter-cluster/between-cluster similarity increases the distance between data points in different clusters by furthering them apart from each other. We previously presented a spatial clustering algorithm, abbreviated CutESC (Cut-Edge for Spatial Clustering) with a graph-based approach. The data presented in this article is related to and supportive to the ...
Spatial data mining is the discovery of inter-esting relationships and characteristics that may exis...
In paper we present C²P, a new clustering algorithm for large spatial databases, which exploits spat...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
In this paper, we propose a cut-edge algorithm for spatial clustering (CutESC) based on proximity gr...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
In this paper, a novel clustering algorithm is proposed to address the clustering problem within bot...
Clustering is a fundamental task in Spatial Data Mining where data consists of observations for a s...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
Capacitated spatial clustering, a type of unsupervised machine learning method, is often used to tac...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Establishing neighborhood relationships among data points is important for several data analysis app...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Spatial data mining is the discovery of inter-esting relationships and characteristics that may exis...
In paper we present C²P, a new clustering algorithm for large spatial databases, which exploits spat...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
Cluster analysis plays a significant role regarding automating such a knowledge discovery process in...
In this paper, we propose a cut-edge algorithm for spatial clustering (CutESC) based on proximity gr...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
In this paper, a novel clustering algorithm is proposed to address the clustering problem within bot...
Clustering is a fundamental task in Spatial Data Mining where data consists of observations for a s...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
Capacitated spatial clustering, a type of unsupervised machine learning method, is often used to tac...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Establishing neighborhood relationships among data points is important for several data analysis app...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
Spatial data mining is the discovery of inter-esting relationships and characteristics that may exis...
In paper we present C²P, a new clustering algorithm for large spatial databases, which exploits spat...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...