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Finding rule groups to classify high dimensional gene expression datasets

journal contribution
posted on 2009-02-01, 00:00 authored by Jiyuan An, Yi-Ping Phoebe Chen
Microarray data provides quantitative information about the transcription profile of cells. To analyse microarray datasets, methodology of machine learning has increasingly attracted bioinformatics researchers. Some approaches of machine learning are widely used to classify and mine biological datasets. However, many gene expression datasets are extremely high dimensionality, traditional machine learning methods cannot be applied effectively and efficiently. This paper proposes a robust algorithm to find out rule groups to classify gene expression datasets. Unlike the most classification algorithms, which select dimensions (genes) heuristically to form rules groups to identify classes such as cancerous and normal tissues, our algorithm guarantees finding out best-k dimensions (genes) to form rule groups for the classification of expression datasets. Our experiments show that the rule groups obtained by our algorithm have higher accuracy than that of other classification approaches.

History

Journal

Computational Biology and Chemistry

Volume

33

Pagination

108 - 113

Location

Oxford, England

ISSN

1476-9271

eISSN

1476-928X

Language

eng

Publication classification

C1 Refereed article in a scholarly journal; C Journal article

Copyright notice

2008, Elsevier Ltd.

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