In this paper, we design the hybrid clustering algorithms, which involve two level clustering. At each of the levels, users can select the k-means, hierarchical or SOM clustering techniques. Unlike the existing cluster analysis techniques, the hybrid clustering approach developed here represents the original data set using a smaller set of prototype vectors (cluster means), which allows efficient use of a clustering algorithm to divide the prototype into groups at the first level. Since the clustering at the first level provides data abstraction first, it reduces the number of samples for the second level clustering. The reduction of the number of samples, hence, the reduction of computational cost is especially important when hierarchical ...
Abstract—In this paper, we present a hybrid clustering algorithm that combines divisive and agglomer...
We propose an algorithm for forming a hier-archical clustering when multiple views of the data are a...
Hierarchical clustering constructs a hierarchy of clusters by either repeatedly merging two smaller ...
K-means algorithm is a well known nonhierarchical method for clustering data. The most important lim...
K-means algorithm is a well known nonhierarchical method for clustering data. The most important lim...
In hybrid clustering, several basic clustering is first generated and then for the clustering aggreg...
Abstract. This paper introduces a hybrid hierarchical clustering method, which is a novel method for...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
There are many clustering methods available and each of them may give a different grouping of datase...
There are many clustering methods available and each of them may give a different grouping of datase...
Data clustering became increasingly important in the field of computational statistics and data mini...
Clustering algorithms try to get groups or clusters of data points that belong together. The main ai...
Random selection of initial centroids (centers) for clusters is a fundamental defect in K-means clus...
Abstract—Many algorithm exist for clustering of certain data. But less research is been done on algo...
Abstract—In this paper, we present a hybrid clustering algorithm that combines divisive and agglomer...
We propose an algorithm for forming a hier-archical clustering when multiple views of the data are a...
Hierarchical clustering constructs a hierarchy of clusters by either repeatedly merging two smaller ...
K-means algorithm is a well known nonhierarchical method for clustering data. The most important lim...
K-means algorithm is a well known nonhierarchical method for clustering data. The most important lim...
In hybrid clustering, several basic clustering is first generated and then for the clustering aggreg...
Abstract. This paper introduces a hybrid hierarchical clustering method, which is a novel method for...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
There are many clustering methods available and each of them may give a different grouping of datase...
There are many clustering methods available and each of them may give a different grouping of datase...
Data clustering became increasingly important in the field of computational statistics and data mini...
Clustering algorithms try to get groups or clusters of data points that belong together. The main ai...
Random selection of initial centroids (centers) for clusters is a fundamental defect in K-means clus...
Abstract—Many algorithm exist for clustering of certain data. But less research is been done on algo...
Abstract—In this paper, we present a hybrid clustering algorithm that combines divisive and agglomer...
We propose an algorithm for forming a hier-archical clustering when multiple views of the data are a...
Hierarchical clustering constructs a hierarchy of clusters by either repeatedly merging two smaller ...