none3Clustering is one of the most important issues in data mining, image segmentation, VLSI design, parallel computing and many other areas. We consider the general problem of partitioning n points into k clusters by maximizing the affinity measure of the points into the clusters. This objective function, referred to as Ratio Association, generalizes the classical (Minimum) Sum-of-Squares clustering problem, where the affinity is measured as closeness in the Euclidean space. This generalized version has emerged in the context of the approximation of chemical conformations for molecules, and in explaining transportation phenomena in dynamical systems, especially in dynamical astronomy. In particular, we refer to the dynamical systems applic...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Abstract—Clustering is a task of finding natural groups in datasets based on measured or perceived s...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
We present a simple spectral approach to the well-studied constrained clustering problem. It capture...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
We present a principled spectral approach to the well-studied constrained clustering problem. It red...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
The lagrangean/surrogate relaxation has been explored as a faster computational alternative to tradi...
Spectral Clustering as a relaxation of the normalized/ratio cut has become one of the standard graph...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The objective functions in optimization models of the sum-of-squares clustering problem reflect intr...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Abstract—Clustering is a task of finding natural groups in datasets based on measured or perceived s...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
We present a simple spectral approach to the well-studied constrained clustering problem. It capture...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
We present a principled spectral approach to the well-studied constrained clustering problem. It red...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
The lagrangean/surrogate relaxation has been explored as a faster computational alternative to tradi...
Spectral Clustering as a relaxation of the normalized/ratio cut has become one of the standard graph...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The objective functions in optimization models of the sum-of-squares clustering problem reflect intr...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Abstract—Clustering is a task of finding natural groups in datasets based on measured or perceived s...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...