e-CCC-Biclustering: Related work on biclustering algorithms for time series gene expression data
نویسندگان
چکیده
This document provides supplementary material describing related work on biclustering algorithms for time series gene expression data analysis. We describe in detail three state of the art biclustering approaches specifically design to discover biclusters in gene expression time series and identify their strengths and weaknesses.
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