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Classification consistency analysis for bootstrapping gene selection
Authors:Shaoning Pang  Ilkka Havukkala  Yingjie Hu  Nikola Kasabov
Affiliation:(1) Knowledge Engineering and Discovery Research Institute, Auckland University of Technology, Private Bag 92006, Auckland, 1020, New Zealand
Abstract:Consistency modelling for gene selection is a new topic emerging from recent cancer bioinformatics research. The result of operations such as classification, clustering, or gene selection on a training set is often found to be very different from the same operations on a testing set, presenting a serious consistency problem. In practice, the inconsistency of microarray datasets prevents many typical gene selection methods working properly for cancer diagnosis and prognosis. In an attempt to deal with this problem, this paper proposes a new concept of classification consistency and applies it for microarray gene selection problem using a bootstrapping approach, with encouraging results.
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