CLUHSIC is a recent clustering framework that unifies the geometric, spectral and statistical views of clustering. In this paper, we show that the recently proposed discriminative view of clustering, which includes the DIFFRAC and DisKmeans algorithms, can also be unified under the CLUH-SIC framework. Moreover, CLUHSIC involves integer programming and one has to resort to heuristics such as iterative local optimization. In this paper, we propose two relaxations that are much more disciplined. The first one uses spectral techniques while the second one is based on semidefinite programming (SDP). Experimental results on a number of structured clustering tasks show that the proposed method significantly outperforms existing optimization method...
Spectral graph theoretic methods have been a fundamental and important topic in the field of manifol...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
International audienceIn this article, we propose a semi-supervised version of spectral clustering, ...
An important problem in genomics is automatically clustering homologous proteins when only sequence ...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
An important problem in genomics is automatic-ally clustering homologous proteins when only sequence...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
We present a novel linear clustering framework (DIFFRAC) which relies on a lin-ear discriminative co...
Abstract—We propose an efficient approach to semidefinite spectral clustering (SSC), which addresses...
Spectral clustering enjoys its success in both data clustering and semi-supervised learning. But, mo...
Multi-way partitioning of an undirected weighted graph where pairwise similarities are assigned as e...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Abstract—With the rapid development of data collection and storage technology, there are plentiful u...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Spectral graph theoretic methods have been a fundamental and important topic in the field of manifol...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
International audienceIn this article, we propose a semi-supervised version of spectral clustering, ...
An important problem in genomics is automatically clustering homologous proteins when only sequence ...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
An important problem in genomics is automatic-ally clustering homologous proteins when only sequence...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
We present a novel linear clustering framework (DIFFRAC) which relies on a lin-ear discriminative co...
Abstract—We propose an efficient approach to semidefinite spectral clustering (SSC), which addresses...
Spectral clustering enjoys its success in both data clustering and semi-supervised learning. But, mo...
Multi-way partitioning of an undirected weighted graph where pairwise similarities are assigned as e...
Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. T...
Abstract—With the rapid development of data collection and storage technology, there are plentiful u...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Spectral graph theoretic methods have been a fundamental and important topic in the field of manifol...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...