Abstract. Representative-based clustering algorithms are quite popular due to their relative high speed and because of their sound theoretical foundation. On the other hand, the clusters they can obtain are limited to convex shapes and clustering results are also highly sensitive to initializations. In this paper, a novel agglomerative clustering algorithm called MOSAIC is proposed which greedily merges neighboring clusters maximizing a given fitness function. MOSAIC uses Gabriel graphs to determine which clusters are neighboring and approximates non-convex shapes as the unions of small clusters that have been computed using a representative-based clustering algorithm. The experimental results show that this technique leads to clusters of h...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
We describe an interactive way to generate a set of clusters for a given data set. The clustering is...
Representative-based clustering algorithms are quite popular due to their relative high speed and be...
Abstract—We propose a fast agglomerative clustering method using an approximate nearest neighbor gra...
A method for determining the mutual nearest neighbours (MNN) and mutual neighbourhood value (mnv) of...
This thesis deals with a nearest-neighbour problem. Specifically, we identify proximity relationshi...
Relative geometric arrangements of the sample points, with reference to the structure of the imbeddi...
We study an agglomerative clustering problem motivated by visualizing disjoint glyphs (represented ...
This paper presents a novel hybrid clustering approach that takes advantage of the efficiency of k-M...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
The modern world has witnessed a surge in technological advancements that span various industries. I...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
We describe an interactive way to generate a set of clusters for a given data set. The clustering is...
Representative-based clustering algorithms are quite popular due to their relative high speed and be...
Abstract—We propose a fast agglomerative clustering method using an approximate nearest neighbor gra...
A method for determining the mutual nearest neighbours (MNN) and mutual neighbourhood value (mnv) of...
This thesis deals with a nearest-neighbour problem. Specifically, we identify proximity relationshi...
Relative geometric arrangements of the sample points, with reference to the structure of the imbeddi...
We study an agglomerative clustering problem motivated by visualizing disjoint glyphs (represented ...
This paper presents a novel hybrid clustering approach that takes advantage of the efficiency of k-M...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
The modern world has witnessed a surge in technological advancements that span various industries. I...
The paper introduces a class of simple hybrid clustering algorithms, based on the idea of obtaining...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
We describe an interactive way to generate a set of clusters for a given data set. The clustering is...