We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity graph under the recently introduced Dasgupta objective function. We introduce a proof technique, called the normalization procedure, that takes any such clustering of a graph G and iteratively improves it until a desired target clustering of G is reached. We use this technique to show both a negative and a positive complexity result. Firstly, we show that in general the problem is NP-complete. Secondly, we consider min-well-behaved graphs, which are graphs H having the property that for any k the graph H^{(k)} being the join of k copies of H has an optimal hierarchical clustering that splits each copy of H in the same optimal way. To optimally ...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...
In this paper we introduce a simple clustering method for undirected graphs. The clustering method u...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical Clustering is an unsupervised data analysis method which has been widely used for decad...
The minimum height of vertex and edge partition trees are well-studied graph parameters known as, fo...
AbstractWe show that for any data set in any metric space, it is possible to construct a hierarchica...
Hiererachical clustering, that is computing a recursive partitioning of a dataset to obtain clusters...
This paper explores hierarchical clustering in the case where pairs of points have dissimilarity sco...
Hierarchical Clustering is a popular tool for understanding the hereditary properties of a data set....
International audienceHierarchical clustering (HC) is a powerful tool in data analysis since it allo...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...
In this paper we introduce a simple clustering method for undirected graphs. The clustering method u...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical Clustering is an unsupervised data analysis method which has been widely used for decad...
The minimum height of vertex and edge partition trees are well-studied graph parameters known as, fo...
AbstractWe show that for any data set in any metric space, it is possible to construct a hierarchica...
Hiererachical clustering, that is computing a recursive partitioning of a dataset to obtain clusters...
This paper explores hierarchical clustering in the case where pairs of points have dissimilarity sco...
Hierarchical Clustering is a popular tool for understanding the hereditary properties of a data set....
International audienceHierarchical clustering (HC) is a powerful tool in data analysis since it allo...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...
In this paper we introduce a simple clustering method for undirected graphs. The clustering method u...