Abstract. In many scientific, engineering or multimedia applications, complex distance functions are used to measure similarity accurately. Furthermore, there often exist simpler lower-bounding distance functions, which can be computed much more efficiently. In this paper, we will show how these simple distance functions can be used to parallelize the density-based clustering algorithm DBSCAN. First, the data is partitioned based on an enumeration calculated by the hierarchical clustering algorithm OPTICS, so that similar objects have adjacent enumeration values. We use the fact that clustering based on lower-bounding distance values conservatively approximates the exact clustering. By integrating the multi-step query processing paradigm di...
Abstract- Clustering is the process of organizing similar objects into the same clusters and dissimi...
Clustering aims to differentiate objects from different groups (clusters) by similarities or distanc...
Clustering algorithms are attractive for the task of class identification in spatial databases. Howe...
Nowadays data mining in large databases of complex objects from scientific, engineering or multimedi...
Abstract. Data mining in large databases of complex objects from scientific, engineering or multimed...
We present NG-DBSCAN, an approximate density-based clustering algorithm that operates on arbitrary d...
One of the main categories in Data Clustering is density based clustering. Density based clustering ...
DBSCAN is one of the most famous clustering algorithms that is based on density clustering. it can f...
We present NG-DBSCAN, an approximate density-based clustering algorithm that operates on arbitrary ...
Clustering partitions a collection of objects into groups called clusters, such that similar objects...
Abstract — One of the main categories in Data Clustering is density based clustering. Density based ...
Databases are getting more and more important for storing complex objects from scientific, engineeri...
Abstract—DBSCAN is a widely used isodensity-based clus-tering algorithm for particle data well-known...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
A new, data density based approach to clustering is presented which automatically determines the num...
Abstract- Clustering is the process of organizing similar objects into the same clusters and dissimi...
Clustering aims to differentiate objects from different groups (clusters) by similarities or distanc...
Clustering algorithms are attractive for the task of class identification in spatial databases. Howe...
Nowadays data mining in large databases of complex objects from scientific, engineering or multimedi...
Abstract. Data mining in large databases of complex objects from scientific, engineering or multimed...
We present NG-DBSCAN, an approximate density-based clustering algorithm that operates on arbitrary d...
One of the main categories in Data Clustering is density based clustering. Density based clustering ...
DBSCAN is one of the most famous clustering algorithms that is based on density clustering. it can f...
We present NG-DBSCAN, an approximate density-based clustering algorithm that operates on arbitrary ...
Clustering partitions a collection of objects into groups called clusters, such that similar objects...
Abstract — One of the main categories in Data Clustering is density based clustering. Density based ...
Databases are getting more and more important for storing complex objects from scientific, engineeri...
Abstract—DBSCAN is a widely used isodensity-based clus-tering algorithm for particle data well-known...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
A new, data density based approach to clustering is presented which automatically determines the num...
Abstract- Clustering is the process of organizing similar objects into the same clusters and dissimi...
Clustering aims to differentiate objects from different groups (clusters) by similarities or distanc...
Clustering algorithms are attractive for the task of class identification in spatial databases. Howe...