Spectral clustering and its use in bioinformatics (Q879406)
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scientific article; zbMATH DE number 5151812
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Spectral clustering and its use in bioinformatics |
scientific article; zbMATH DE number 5151812 |
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Spectral clustering and its use in bioinformatics (English)
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11 May 2007
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The authors formulate a discrete optimization problem that gives a simple derivation of a widely used class of spectral clustering algorithms. These algorithms bundle objects into groups of similar objects, using the eigendecomposition of a matrix derived from the (real symmetric) matrix \(W=(w_{ij})\), where, for \(i\neq j\), \(w_{ij}\) is a measure of the similarity of the \(i\)th and \(j\)th objects, and \(w_{ii}=0\). The objects are regarded as vertices of an undirected graph. The authors' approach helps explain the difference observed between methods based on the normalized and unnormalized graph Laplacian. A numerical illustration is given using microarray datasets published by cancer researchers.
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partitioning
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scaling
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balancing threshold
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gene expression
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Fiedler vector
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graph Laplacian
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random graph
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numerical examples
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discrete optimization problem
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spectral clustering algorithms
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eigendecomposition
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0.9076981
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0.8775605
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0.87368673
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0.86472857
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0.8619772
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