Clustering is one of the most used data mining techniques, while computational topology is a very recent field bridging abstract mathematics with concrete computational techniques. In this paper, we explore the hypothesis that topologically-similar clusters may indicate meaningful relationships. Our approach has an efficient implementation based on computing Minimum Spanning Trees to obtain topological information of each cluster. We then compute a discreteness and a disconnectedness index, used to characterize each cluster, thus allowing the retrieval of equivalence classes. We show that for a real-world highdimensional network intrusion data set, the topologically-similar clusters retrieved by our approach do indeed correspond to meaningf...
We present a procedure for the identification of clusters in multivariate data sets, based on the co...
International audienceThe exponential growth of data generates terabytes of very large databases. Th...
This paper develops a new method for hierarchical clustering based on a generative dendritic cluster...
Clustering is one of the most used data mining techniques, while computational topology is a very re...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
<div><p>We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-...
This work proposes a method for data clustering based on complex networks theory. A data set is repr...
AbstractThis work proposes a method for data clustering based on complex networks theory. A data set...
We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-sets in ...
Unsupervised clustering, also known as natural clustering, stands for the classification of data acc...
The identification of clusters or communities in complex networks is a reappearing problem. The mini...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
Information networks, such as biological or social networks, contain groups of related entities, whi...
In Network Science node neighbourhoods, also called ego-centered networks have attracted large atten...
We present a procedure for the identification of clusters in multivariate data sets, based on the co...
International audienceThe exponential growth of data generates terabytes of very large databases. Th...
This paper develops a new method for hierarchical clustering based on a generative dendritic cluster...
Clustering is one of the most used data mining techniques, while computational topology is a very re...
We discuss topological aspects of cluster analysis and show that inferring the topological structure...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
<div><p>We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-...
This work proposes a method for data clustering based on complex networks theory. A data set is repr...
AbstractThis work proposes a method for data clustering based on complex networks theory. A data set...
We introduce a graph-theoretic approach to extract clusters and hierarchies in complex data-sets in ...
Unsupervised clustering, also known as natural clustering, stands for the classification of data acc...
The identification of clusters or communities in complex networks is a reappearing problem. The mini...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
Information networks, such as biological or social networks, contain groups of related entities, whi...
In Network Science node neighbourhoods, also called ego-centered networks have attracted large atten...
We present a procedure for the identification of clusters in multivariate data sets, based on the co...
International audienceThe exponential growth of data generates terabytes of very large databases. Th...
This paper develops a new method for hierarchical clustering based on a generative dendritic cluster...