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Detecting potential labeling errors in microarrays by data perturbation

机译:通过数据扰动检测微阵列中潜在的标记错误

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Motivation: Classification is widely used in medical applications. However, the quality of the classifier depends critically on the accurate labeling of the training data. But for many medical applications, labeling a sample or grading a biopsy can be subjective. Existing studies confirm this phenomenon and show that even a very small number of mislabeled samples could deeply degrade the performance of the obtained classifier, particularly when the sample size is small. The problem we address in this paper is to develop a method for automatically detecting samples that are possibly mislabeled.
机译:动机:分类在医学应用中被广泛使用。但是,分类器的质量主要取决于训练数据的准确标记。但是对于许多医疗应用而言,标记样品或对活检进行分级可能是主观的。现有研究证实了这种现象,并表明,即使极少量的标签错误的样本也可能严重降低所获得分类器的性能,尤其是当样本量较小时。我们在本文中解决的问题是开发一种自动检测可能贴错标签的样品的方法。

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