Article ID Journal Published Year Pages File Type
394989 Information Sciences 2008 19 Pages PDF
Abstract

A biclustering algorithm, based on a greedy technique and enriched with a local search strategy to escape poor local minima, is proposed. The algorithm starts with an initial random solution and searches for a locally optimal solution by successive transformations that improve a gain function. The gain function combines the mean squared residue, the row variance, and the size of the bicluster. Different strategies to escape local minima are introduced and compared. Experimental results on several microarray data sets show that the method is able to find significant biclusters, also from a biological point of view.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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