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Mining and Integrating Reliable Decision Rules for Imbalanced Cancer Gene Expression Data Sets 被引量:5
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作者 Hualong Yu Jun Ni +1 位作者 Yuanyuan Dan Sen Xu 《Tsinghua Science and Technology》 SCIE EI CAS 2012年第6期666-673,共8页
There have been many skewed cancer gene expression datasets in the post-genomic era.Extraction of differential expression genes or construction of decision rules using these skewed datasets by traditional algorithms w... There have been many skewed cancer gene expression datasets in the post-genomic era.Extraction of differential expression genes or construction of decision rules using these skewed datasets by traditional algorithms will seriously underestimate the performance of the minority class,leading to inaccurate diagnosis in clinical trails.This paper presents a skewed gene selection algorithm that introduces a weighted metric into the gene selection procedure.The extracted genes are paired as decision rules to distinguish both classes,with these decision rules then integrated into an ensemble learning framework by majority voting to recognize test examples;thus avoiding tedious data normalization and classifier construction.The mining and integrating of a few reliable decision rules gave higher or at least comparable classification performance than many traditional class imbalance learning algorithms on four benchmark imbalanced cancer gene expression datasets. 展开更多
关键词 cancer gene expression data class imbalance paired differential expression genes decision ruleensemble learning majority voting
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