Multi-objective evolutionary biclustering of gene expression data

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摘要

Biclustering or simultaneous clustering of both genes and conditions have generated considerable interest over the past few decades, particularly related to the analysis of high-dimensional gene expression data in information retrieval, knowledge discovery, and data mining. The objective is to find sub-matrices, i.e., maximal subgroups of genes and subgroups of conditions where the genes exhibit highly correlated activities over a range of conditions. Since these two objectives are mutually conflicting, they become suitable candidates for multi-objective modeling. In this study, a novel multi-objective evolutionary biclustering framework is introduced by incorporating local search strategies. A new quantitative measure to evaluate the goodness of the biclusters is developed. The experimental results on benchmark datasets demonstrate better performance as compared to existing algorithms available in literature.

论文关键词:Multi-objective optimization,Microarray,Genetic algorithms,Knowledge discovery,Clustering

论文评审过程:Received 3 November 2005, Revised 3 February 2006, Accepted 1 March 2006, Available online 18 April 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.03.003