In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected graph G and a positive integer k; the task is to decide whether G can be transformed into a cluster graph, i.e., a disjoint union of cliques, by changing at most k adjacencies, that is, by adding or deleting at most k edges. The motivation of the problem stems from various tasks in computational biology (Ben-Dor et al., Journal of Computational Biology 1999) and machine learning (Bansal et al., Machine Learning 2004). Although in general Correlation Clustering is APX-hard (Charikar et al., FOCS 2003), the version of the problem where the number of cliques may not exceed a prescribed constant p admits a PTAS (Giotis and Guruswami, SODA 2006). We ...
The Cluster Editing problem seeks a transformation of a given undirected graph into a transitive gra...
We introduce a dynamic version of the NP-hard Cluster Editing problem. The essential point here is t...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
Cluster Editing is transforming a graph by at most k edge insertions or deletions into a disjoint un...
Cluster Editing is transforming a graph by at most k edge insertions or deletions into a disjoint un...
We present efficient fixed-parameter algorithms for the NP-complete edge modification problems Clust...
In a clustering problem one has to partition a set of elements into homogeneous and well-separated s...
AbstractGiven an undirected graph G=(V,E) and a nonnegative integer k, the NP-hard Cluster Editing p...
AbstractIn a clustering problem one has to partition a set of elements into homogeneous and well-sep...
Cluster Deletion and Cluster Editing ask to transform a graph by at most k edge deletions or edge e...
The correlation clustering problem is a fundamental problem in both theory and practice, and it invo...
Cluster Deletion and Cluster Editing ask to transform a graph by at most k edge deletions or edge ed...
The Parameterized Algorithms and Computational Experiments challenge (PACE) 2021 was devoted to engi...
The Cluster Editing problem seeks a transformation of a given undirected graph into a transitive gra...
We introduce a dynamic version of the NP-hard Cluster Editing problem. The essential point here is t...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
Cluster Editing is transforming a graph by at most k edge insertions or deletions into a disjoint un...
Cluster Editing is transforming a graph by at most k edge insertions or deletions into a disjoint un...
We present efficient fixed-parameter algorithms for the NP-complete edge modification problems Clust...
In a clustering problem one has to partition a set of elements into homogeneous and well-separated s...
AbstractGiven an undirected graph G=(V,E) and a nonnegative integer k, the NP-hard Cluster Editing p...
AbstractIn a clustering problem one has to partition a set of elements into homogeneous and well-sep...
Cluster Deletion and Cluster Editing ask to transform a graph by at most k edge deletions or edge e...
The correlation clustering problem is a fundamental problem in both theory and practice, and it invo...
Cluster Deletion and Cluster Editing ask to transform a graph by at most k edge deletions or edge ed...
The Parameterized Algorithms and Computational Experiments challenge (PACE) 2021 was devoted to engi...
The Cluster Editing problem seeks a transformation of a given undirected graph into a transitive gra...
We introduce a dynamic version of the NP-hard Cluster Editing problem. The essential point here is t...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...