Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining and dimension reduction. Spectral clustering and reordering algorithms have been designed and implemented in many disciplines, and they can be motivated from several dierent standpoints. Here we give a general, unied, derivation from an applied linear algebra perspective. We use a variational approach that has the benet of (a) naturally introducing an appropriate scaling, (b) allowing for a solution in any desired dimension, and (c) dealing with both the clustering and bi-clustering issues in the same framework. The motivation and analysis is then backed up with examples involving two large data sets from modern, high-throughput, experimental ...
Background: The extended use of microarray technologies has enabled the generation and accumulation ...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Background: Multi-gene interactions likely play an important role in the development of complex phen...
Typically, gene expression data are formed by thousands of genes associated to tens or hundreds of ...
©2005 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
We describe an extension and application of a new unsupervised statistical learning technique, known...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Current methods for analysis of gene expression data are mostly based on clustering and classificati...
A good number of biclustering algorithms have been proposed for grouping gene expression data. Many ...
We give two informative derivations of a spectral algorithm for clustering and partitioning a bi-par...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Background: The extended use of microarray technologies has enabled the generation and accumulation ...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Eigenvectors and, more generally, singular vectors, have proved to be useful tools for data mining a...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Background: Multi-gene interactions likely play an important role in the development of complex phen...
Typically, gene expression data are formed by thousands of genes associated to tens or hundreds of ...
©2005 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
Motivation: Bi-clustering extends the traditional clustering techniques by attempting to find (all) ...
We describe an extension and application of a new unsupervised statistical learning technique, known...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Current methods for analysis of gene expression data are mostly based on clustering and classificati...
A good number of biclustering algorithms have been proposed for grouping gene expression data. Many ...
We give two informative derivations of a spectral algorithm for clustering and partitioning a bi-par...
AbstractWe formulate a discrete optimization problem that leads to a simple and informative derivati...
Background: The extended use of microarray technologies has enabled the generation and accumulation ...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...