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首页> 外文期刊>International journal of data mining and bioinformatics >Improving accuracy of microarray classification by a simple multi-task feature selection filter
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Improving accuracy of microarray classification by a simple multi-task feature selection filter

机译:通过简单的多任务特征选择过滤器提高微阵列分类的准确性

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摘要

Leveraging information from the publicly accessible data repositories can be very useful when training a classifier from a small-sample microarray data. To achieve this, we proposed a multi-task feature selection filter that borrows strength from auxiliary microarray data. It uses Kruskal-Wallis test on auxiliary data and ranks genes based on their aggregated p-values. The top-ranked genes are selected as features for the target task classifier. The multi-task filter was evaluated on microarray data related to nine different types of cancers. The results showed that the multi-task feature selection is very successful when applied in conjunction with both single-task and multi-task classifiers.
机译:从小样本微阵列数据训练分类器时,利用可公开访问的数据库中的信息非常有用。为此,我们提出了一种多任务特征选择过滤器,该过滤器借鉴了辅助微阵列数据的优势。它对辅助数据使用Kruskal-Wallis检验,并根据它们的汇总p值对基因进行排名。选择排名靠前的基因作为目标任务分类器的特征。在与9种不同类型癌症相关的微阵列数据上评估了多任务过滤器。结果表明,与单任务分类器和多任务分类器一起使用时,多任务特征选择非常成功。

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