For several major applications of data analysis, objects are often not represented as feature vectors in a vector space, but rather by a matrix gathering pairwise proximites. Such pairwise data often violates metricity and, therefore, cannot be naturally embedded in a vector space. Concerning the problem of unsupervised structure detection or clustering, in this paper, a new embedding method for pairwise data into Euclidean vector spaces is introduced. We show that all clustering methods, which are invariant under additive shifts of the pairwise proximities, can be reformulated as grouping problems in Euclidian spaces. The most prominent property of this constant shift embedding framework is the complete preservation of the cluster structur...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Clustering partitions a collection of objects into groups called clusters, such that similar objects...
Target of cluster analysis is to group data represented as a vector of measurements or a point in a ...
Partitioning a data set and extracting hidden structure from the data arises in different applicatio...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
Organizing data into clusters is a key task for data mining problems. In this paper we address the p...
Given a set of points, the goal of data clustering is to group them into clusters, such that the int...
This paper proposes a new representation space, called the cluster space, for data points that origi...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
In metric space theory connectedness can be described in terms of a mapping of sets onto the real ax...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
[[abstract]]An efficient clustering algorithm is proposed in an unsupervised manner to cluster the g...
This paper investigates the problem of treating embedding and clustering simultaneously to uncover d...
This paper introduces non-Euclidean c-means clustering algorithms. These algorithms rely on weighted...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Clustering partitions a collection of objects into groups called clusters, such that similar objects...
Target of cluster analysis is to group data represented as a vector of measurements or a point in a ...
Partitioning a data set and extracting hidden structure from the data arises in different applicatio...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
Organizing data into clusters is a key task for data mining problems. In this paper we address the p...
Given a set of points, the goal of data clustering is to group them into clusters, such that the int...
This paper proposes a new representation space, called the cluster space, for data points that origi...
There are two common data representations in intelligent data analysis, namely the vectorial represe...
In metric space theory connectedness can be described in terms of a mapping of sets onto the real ax...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
[[abstract]]An efficient clustering algorithm is proposed in an unsupervised manner to cluster the g...
This paper investigates the problem of treating embedding and clustering simultaneously to uncover d...
This paper introduces non-Euclidean c-means clustering algorithms. These algorithms rely on weighted...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Clustering partitions a collection of objects into groups called clusters, such that similar objects...
Target of cluster analysis is to group data represented as a vector of measurements or a point in a ...