Resolution parameters in graph clustering control the size and structure of clusters formed by solving a parametric objective function. Typically there is more than one meaningful way to cluster a graph, and solving the same objective function for different resolution parameters produces clusterings at different levels of granularity, each of which can be meaningful depending on the application. In this paper, we address the task of efficiently solving a parameterized graph clustering objective for all values of a resolution parameter. Specifically, we consider a new analysis-friendly objective we call LambdaPrime, involving a parameter λ ∈ (0, 1). LambdaPrime is an adaptation of LambdaCC, a significant family of instances of the Correlatio...
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
Modularity is a recently introduced quality measure for graph clusterings. It has immediately receiv...
Resolution parameters in graph clustering control the size and structure of clusters formed by solvi...
In graph theory and network analysis, communities or clusters are sets of nodes in a graph that shar...
Finding clusters of well-connected nodes in a graph is an extensively studied problem in graph-based...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
In recent data mining research, the graph clustering methods, such as normalized cut and ratio cut, ...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
We propose a new method to quantify the solution stability of a large class of combinatorial optimiz...
Classical clustering problems search for a partition of objects into a fixed number of clusters. In ...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
We present new results for LambdaCC and MotifCC, two recently introduced variants of the well-studie...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
Modularity is a recently introduced quality measure for graph clusterings. It has immediately receiv...
Resolution parameters in graph clustering control the size and structure of clusters formed by solvi...
In graph theory and network analysis, communities or clusters are sets of nodes in a graph that shar...
Finding clusters of well-connected nodes in a graph is an extensively studied problem in graph-based...
Graph clustering, or community detection, is the task of identifying groups of closely related objec...
In recent data mining research, the graph clustering methods, such as normalized cut and ratio cut, ...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
We propose a new method to quantify the solution stability of a large class of combinatorial optimiz...
Classical clustering problems search for a partition of objects into a fixed number of clusters. In ...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
We present new results for LambdaCC and MotifCC, two recently introduced variants of the well-studie...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
In the Correlation Clustering problem, also known as Cluster Editing, we are given an undirected gra...
Abstract. Clustering a graph means identifying internally dense sub-graphs which are only sparsely i...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
Modularity is a recently introduced quality measure for graph clusterings. It has immediately receiv...