We present an iterative flat hard clustering algorithm designed to operate on arbitrary similarity matrices, with the only constraint that these matrices be symmetrical. Although functionally very close to kernel k-means, our proposal performs a maximization of average intra-class similarity, instead of a squared distance minimization, in order to remain closer to the semantics of similarities. We show that this approach permits the relaxing of some conditions on usable affinity matrices like semi-positiveness, as well as opening possibilities for computational optimization required for large datasets. Systematic evaluation on a variety of data sets shows that compared with kernel k-means and the spectral clustering methods, the proposed ap...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
International audienceWe present an iterative flat clustering algorithm designed to operate on arbit...
Many clustering methods partition the data groups based on the input data similarity matrix. Thus, t...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
[[abstract]]An efficient clustering algorithm is proposed in an unsupervised manner to cluster the g...
Many kernel-based clustering algorithms do not scale up to high-dimensional large datasets. The simi...
International audienceThe goal of clustering is to group similar objects into meaningful partitions....
Abstract — We propose a novel approach to relational cluster-ing: Given a matrix of pairwise similar...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
We [6, 7] have recently investigated several families of clustering algorithms. In this paper, we sh...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
International audienceWe present an iterative flat clustering algorithm designed to operate on arbit...
Many clustering methods partition the data groups based on the input data similarity matrix. Thus, t...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
[[abstract]]An efficient clustering algorithm is proposed in an unsupervised manner to cluster the g...
Many kernel-based clustering algorithms do not scale up to high-dimensional large datasets. The simi...
International audienceThe goal of clustering is to group similar objects into meaningful partitions....
Abstract — We propose a novel approach to relational cluster-ing: Given a matrix of pairwise similar...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
We [6, 7] have recently investigated several families of clustering algorithms. In this paper, we sh...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...