We give two informative derivations of a spectral algorithm for clustering and partitioning a bi-partite graph. In the first case we begin with a discrete optimization problem that relaxes into a tractable continuous analogue. In the second case we use the power method to derive an iterative interpretation of the algorithm. Both versions reveal a natural approach for re-scaling the edge weights and help to explain the performance of the algorithm in the presence of outliers. Our motivation for this work is in the analysis of microarray data from bioinformatics, and we give some numerical results for a publicly available acute leukemia data set
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
Abstract. We give two informative derivations of a spectral algorithm for clustering and par-titioni...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
The analysis of microarray datasets is complicated by the magnitude of the available information. Mo...
The analysis of microarray datasets is complicated by the magnitude of the available information. Mo...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
International audienceMicroarray technology generates large amounts of expression level of genes to ...
In providing simultaneous information on expression profiles for thousands of genes, microarray tech...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
Abstract. We give two informative derivations of a spectral algorithm for clustering and par-titioni...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
The analysis of microarray datasets is complicated by the magnitude of the available information. Mo...
The analysis of microarray datasets is complicated by the magnitude of the available information. Mo...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
International audienceMicroarray technology generates large amounts of expression level of genes to ...
In providing simultaneous information on expression profiles for thousands of genes, microarray tech...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
Bioinformatics has emerged due to the increase in experimental data in the molecular biology field. ...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...