In this paper we introduce a new clustering technique called Regularity Clustering. This new technique is based on the practical variants of the two constructive versions of the Regularity Lemma, a very useful tool in graph theory. The lemma claims that every graph can be parti-tioned into pseudo-random graphs. While the Regularity Lemma has become very important in proving theoretical results, it has no direct practical applications so far. An important reason for this lack of practical applications is that the graph under consideration has to be astronomi-cally large. This requirement makes its application restrictive in practice where graphs typically are much smaller. In this paper we propose modifications of the constructive versions o...
These are notes on the method of normalized graph cuts and its applications to graph clustering. I p...
Introduced in the mid-1970s as an intermediate step in proving a long-standing conjecture on arithme...
Graph clustering has received growing attention in recent years as an important analytical technique...
In this paper we introduce a new clustering technique called Regularity Clustering. This new techniq...
Szemeredi’s regularity lemma is a deep result from extremal graph theory which states that every gra...
The Regularity Lemma of Szemeredi is a fundamental tool in extremal graph theory with a wide range o...
The fact that clustering is perhaps the most used technique for exploratory data analysis is only a ...
We describe and illustrate a novel algorithm for clustering a large number of time series into few '...
AbstractClustering is a widely used technique in machine learning, however, relatively little resear...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
International audienceMany papers pointed out the interest of (co-)clustering both data and features...
The performance of spectral clustering can be considerably improved via regularization, as demonstra...
2 3Abstract: This is a survey of the method of normalized graph cuts and its applications to graph c...
We present a novel spectral clustering method that enables users to incor-porate prior knowledge of ...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
These are notes on the method of normalized graph cuts and its applications to graph clustering. I p...
Introduced in the mid-1970s as an intermediate step in proving a long-standing conjecture on arithme...
Graph clustering has received growing attention in recent years as an important analytical technique...
In this paper we introduce a new clustering technique called Regularity Clustering. This new techniq...
Szemeredi’s regularity lemma is a deep result from extremal graph theory which states that every gra...
The Regularity Lemma of Szemeredi is a fundamental tool in extremal graph theory with a wide range o...
The fact that clustering is perhaps the most used technique for exploratory data analysis is only a ...
We describe and illustrate a novel algorithm for clustering a large number of time series into few '...
AbstractClustering is a widely used technique in machine learning, however, relatively little resear...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
International audienceMany papers pointed out the interest of (co-)clustering both data and features...
The performance of spectral clustering can be considerably improved via regularization, as demonstra...
2 3Abstract: This is a survey of the method of normalized graph cuts and its applications to graph c...
We present a novel spectral clustering method that enables users to incor-porate prior knowledge of ...
In this paper, we examine a spectral clustering algorithm for similarity graphs drawn from a simple ...
These are notes on the method of normalized graph cuts and its applications to graph clustering. I p...
Introduced in the mid-1970s as an intermediate step in proving a long-standing conjecture on arithme...
Graph clustering has received growing attention in recent years as an important analytical technique...