Boosting and Microarray Data

作者:Philip M. Long, Vinsensius Berlian Vega

摘要

We have found one reason why AdaBoost tends not to perform well on gene expression data, and identified simple modifications that improve its ability to find accurate class prediction rules. These modifications appear especially to be needed when there is a strong association between expression profiles and class designations. Cross-validation analysis of six microarray datasets with different characteristics suggests that, suitably modified, boosting provides competitive classification accuracy in general.

论文关键词:supervised learning, classification, boosting, gene expression data, microarray data, bioinformatics

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论文官网地址:https://doi.org/10.1023/A:1023937123600