Biclustering Algorithms : A Survey Amos Tanay

@inproceedings{Sharan2004BiclusteringA,
  title={Biclustering Algorithms : A Survey Amos Tanay},
  author={Roded Sharan and Ron Shamir},
  year={2004}
}
Analysis of large scale geonomics data, notably gene expression, has initially focused on clustering methods. Recently, biclustering techniques were proposed for revealing submatrices showing unique patterns. We review some of the algorithmic approaches to biclustering and discuss their properties. 

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