We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-sets in an unsupervised and deterministic manner, without the use of any prior information. This is achieved by building topologically embedded networks containing the subset of most significant links and analyzing the network structure. For a planar embedding, this method provides both the intra-cluster hierarchy, which describes the way clusters are composed, and the inter-cluster hierarchy which describes how clusters gather together. We discuss performance, robustness and reliability of this method by first investigating several artificial data-sets, finding that it can outperform significantly other established approaches. Then we show that our ...
BACKGROUND: Extensive and automated data integration in bioinformatics facilitates the construction ...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
<div><p>We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-...
We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-sets in ...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
Hierarchical clustering is a popular method for grouping together similar elements based on a distan...
Clustering is one of the most used data mining techniques, while computational topology is a very re...
A novel breadth-first based structural clustering method for graphs is proposed. Clustering is an im...
Motivation: Unbiased clustering methods are needed to analyze growing numbers of complex data sets. ...
Network data represent relational information between interacting entities. They can be described by...
There is a growing need for unbiased clustering algorithms, ideally automated to analyze complex dat...
A powerful method in the analysis of datasets where there are many natural clusters with varying sta...
<div><p>Network clustering is a very popular topic in the network science field. Its goal is to divi...
This paper develops a new method for hierarchical clustering based on a generative dendritic cluster...
BACKGROUND: Extensive and automated data integration in bioinformatics facilitates the construction ...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
<div><p>We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-...
We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-sets in ...
Motivation: Recently, network theory has emerged as an effective tool to model complex systems by re...
Hierarchical clustering is a popular method for grouping together similar elements based on a distan...
Clustering is one of the most used data mining techniques, while computational topology is a very re...
A novel breadth-first based structural clustering method for graphs is proposed. Clustering is an im...
Motivation: Unbiased clustering methods are needed to analyze growing numbers of complex data sets. ...
Network data represent relational information between interacting entities. They can be described by...
There is a growing need for unbiased clustering algorithms, ideally automated to analyze complex dat...
A powerful method in the analysis of datasets where there are many natural clusters with varying sta...
<div><p>Network clustering is a very popular topic in the network science field. Its goal is to divi...
This paper develops a new method for hierarchical clustering based on a generative dendritic cluster...
BACKGROUND: Extensive and automated data integration in bioinformatics facilitates the construction ...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...