International audienceWe present a novel hierarchical graph clustering algorithm inspired by modularity-based clustering techniques. The algorithm is agglomerative and based on a simple distance between clusters induced by the probability of sampling node pairs. We prove that this distance is reducible, which enables the use of the nearest-neighbor chain to speed up the agglomeration. The output of the algorithm is a regular dendrogram, which reveals the multi-scale structure of the graph. The results are illustrated on both synthetic and real datasets
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
Ensemble clustering, as an important extension of the clustering problem, refers to the problem of c...
10.3390/e15125464Complex systems are usually represented as an intricate set of relations between th...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
This paper studies the hierarchical clustering problem, where the goal is to produce a dendrogram th...
This thesis studies the hierarchical clustering problem, where the goal is to produce a dendrogram t...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
In AI and Web communities, modularity-based graph clustering algorithms are being applied to various...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Graph clustering is one of the constantly actual data analysis problems. There are various statement...
International audienceAgglomerative clustering methods have been widely used by many research commun...
We survey agglomerative hierarchical clustering algorithms and discuss efficient implementations tha...
Network data represent relational information between interacting entities. They can be described by...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
Ensemble clustering, as an important extension of the clustering problem, refers to the problem of c...
10.3390/e15125464Complex systems are usually represented as an intricate set of relations between th...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
This paper studies the hierarchical clustering problem, where the goal is to produce a dendrogram th...
This thesis studies the hierarchical clustering problem, where the goal is to produce a dendrogram t...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
In AI and Web communities, modularity-based graph clustering algorithms are being applied to various...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Graph clustering is one of the constantly actual data analysis problems. There are various statement...
International audienceAgglomerative clustering methods have been widely used by many research commun...
We survey agglomerative hierarchical clustering algorithms and discuss efficient implementations tha...
Network data represent relational information between interacting entities. They can be described by...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
Agglomerative Clustering techniques work by recursively merging graph vertices into communities, to ...
Ensemble clustering, as an important extension of the clustering problem, refers to the problem of c...