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Propagation-Based Biclustering Algorithm for Extracting Inclusion-Maximal Motifs

In: Computing and Informatics, vol. 35, no. 2
P. Orzechowski - K. Boryczko

Details:

Year, pages: 2016, 391 - 410
Keywords:
Biclustering, bioinformatics, pattern matching, data mining, microarray gene expression data, conserved gene expression motifs
About article:
Biclustering, which is simultaneous clustering of columns and rows in data matrix, became an issue when classical clustering algorithms proved not to be good enough to detect similar expressions of genes under subset of conditions. Biclustering algorithms may be also applied to different datasets, such as medical, economical, social networks etc. In this article we explain the concept beneath hybrid biclustering algorithms and present details of propagation-based biclustering, a novel approach for extracting inclusion-maximal gene expression motifs conserved in gene microarray data. We prove that this approach may successfully compete with other well-recognized biclustering algorithms.
How to cite:
ISO 690:
Orzechowski, P., Boryczko, K. 2016. Propagation-Based Biclustering Algorithm for Extracting Inclusion-Maximal Motifs. In Computing and Informatics, vol. 35, no.2, pp. 391-410. 1335-9150.

APA:
Orzechowski, P., Boryczko, K. (2016). Propagation-Based Biclustering Algorithm for Extracting Inclusion-Maximal Motifs. Computing and Informatics, 35(2), 391-410. 1335-9150.