AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chawla, Correlation Clustering, in: Proc. 43rd Symp. Foundations of Computer Science, FOCS, 2002, pp. 238–247] as a model for clustering data when a binary relationship between data points is known. More precisely, for each pair of points we have two scores measuring the similarity and dissimilarity respectively, of the two points, and we would like to compute an optimal partition where the value of a partition is obtained by summing up the similarity scores of pairs involving points from the same cluster and the dissimilarity scores of pairs involving points from different clusters. A closely related problem is Consensus Clustering, where we are...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
We consider the problem of Consensus Cluster-ing. Given a finite set of input clusterings over some ...
International audienceIn correlation clustering, we are given $n$ objects together with a binary sim...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
This paper introduces a polynomial time approxima-tion scheme for the metric Correlation Cluster-ing...
We continue the investigation of problems concerning correlation clustering or clustering with quali...
We continue the investigation of problems concerning correlation clustering or clustering with quali...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
AbstractThe Consensus Clustering problem has been introduced as an effective way to analyze the resu...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
Consensus clustering (or clustering aggregation) inputs $k$ partitions of a given ground set $V$, an...
Abstract We consider the following clustering problem: we havea complete graph on n vertices (items)...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
We consider the problem of Consensus Cluster-ing. Given a finite set of input clusterings over some ...
International audienceIn correlation clustering, we are given $n$ objects together with a binary sim...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
This paper introduces a polynomial time approxima-tion scheme for the metric Correlation Cluster-ing...
We continue the investigation of problems concerning correlation clustering or clustering with quali...
We continue the investigation of problems concerning correlation clustering or clustering with quali...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
We consider the following clustering problem: we have a complete graph on vertices (items), where e...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
AbstractThe Consensus Clustering problem has been introduced as an effective way to analyze the resu...
We consider the following clustering problem: we have a complete graph on n vertices (items), where ...
Consensus clustering (or clustering aggregation) inputs $k$ partitions of a given ground set $V$, an...
Abstract We consider the following clustering problem: we havea complete graph on n vertices (items)...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
A novel framework for consensus clustering is presented which has the ability to determine both the ...
We consider the problem of Consensus Cluster-ing. Given a finite set of input clusterings over some ...
International audienceIn correlation clustering, we are given $n$ objects together with a binary sim...