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Supervised classification of categorical data with uncertain labels for DNA barcoding

机译:带有不确定标签的分类数据的监督分类,用于DNA条形码

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In the supervised classification framework, the human supervision is required for labeling a set of learning data which are then used for building the classifier. However, in many applications, the human supervision is either imprecise, difficult or expensive and this gives rise to non robust classifiers. An interesting application where this situation occurs is DNA barcoding which aims to develop a standard tool to identify species with no or limited recourse to taxonomic expertise. In some cases, the morphological features describing the reference sample may be misleading and the taxonomists attribute labels incorrectly. This work presents a robust supervised classification method for categorical data based on a multivariate multinomial mixture model. The proposed method is applied to DNA barcoding and compared to classical methods on a real dataset.
机译:在监督分类框架中,需要人工监督来标记一组学习数据,然后将其用于构建分类器。然而,在许多应用中,人为监督是不精确,困难或昂贵的,这导致了非稳健的分类器。发生这种情况的一个有趣的应用是DNA条形码,其目的是开发一种标准工​​具来识别没有分类学专门知识或仅依靠分类学专业知识的物种。在某些情况下,描述参考样品的形态学特征可能会产生误导,并且分类学家将属性标签错误地识别出来。这项工作提出了一种基于多元多项式混合模型的分类数据鲁棒监督分类方法。所提出的方法应用于DNA条形码,并与真实数据集上的经典方法进行比较。

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