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Minimum spanning tree based one-class classifier

机译:基于最小生成树的一类分类器

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In the problem of one-class classification one of the classes, called the target class, has to be distinguished from all other possible objects. These are considered as non-targets. The need for solving such a task arises in many practical applications, e.g. in machine fault detection, face recognition, authorship verification, fraud recognition or person identification based on biometric data.rnThis paper proposes a new one-class classifier, the minimum spanning tree class descriptor (mst_cd). This classifier builds on the structure of the minimum spanning tree constructed on the target training set only. The classification of test objects relies on their distances to the closest edge of that tree, hence the proposed method is an example of a distance-based one-class classifier. Our experiments show that the mst_cd performs especially well in case of small sample size problems and in high-dimensional spaces.
机译:在一类分类的问题中,必须将一种称为目标类的类与所有其他可能的对象区分开。这些被视为非目标。解决这种任务的需求出现在许多实际应用中,例如,在美国专利申请No.5,676,837中。在机器故障检测,人脸识别,作者身份验证,欺诈识别或基于生物特征数据的人员识别方面。本文提出了一种新的一类分类器,即最小生成树类描述符(mst_cd)。该分类器建立在仅基于目标训练集的最小生成树的结构上。测试对象的分类取决于它们到树的最接近边缘的距离,因此,所提出的方法是基于距离的一类分类器的示例。我们的实验表明,在小样本量问题和高维空间中,mst_cd的性能特别好。

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