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Methods for labeling error detection in microarrays based on the effect of data perturbation on the regression model

机译:基于数据扰动对回归模型的影响的微阵列中标记错误检测的方法

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Motivation: Mislabeled samples often appear in gene expression profile because of the similarity of different sub-type of disease and the subjective misdiagnosis. The mislabeled samples deteriorate supervised learning procedures. The LOOE-sensitivity algorithm is an approach for mislabeled sample detection for microarray based on data perturbation. However, the failure of measuring the perturbing effect makes the LOOE-sensitivity algorithm a poor performance. The purpose of this article is to design a novel detection method for mislabeled samples of microarray, which could take advantage of the measuring effect of data perturbations.
机译:动机:标签错误的样品经常出现在基因表达谱中,这是由于疾病的不同亚型和主观误诊的相似性所致。贴错标签的样本会使监督学习程序恶化。 LOOE灵敏度算法是一种基于数据扰动对微阵列样品进行错误标签检测的方法。但是,无法测量干扰效果使得LOOE灵敏度算法的性能较差。本文的目的是设计一种新的检测方法,用于检测标记错误的微阵列样品,该方法可以利用数据扰动的测量效果。

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