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Towards Application of One-Class Classification Methods to Medical Data

机译:向医疗数据应用单级分类方法

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In the problem of one-class classification (OCC) one of the classes, the target class, has to be distinguished from all other possible objects, considered as nontargets. In many biomedical problems this situation arises, for example, in diagnosis, image based tumor recognition or analysis of electrocardiogram data. In this paper an approach to OCC based on a typicality test is experimentally compared with reference state-of-the-art OCC techniques—Gaussian, mixture of Gaussians, naive Parzen, Parzen, and support vector data description—using biomedical data sets. We evaluate the ability of the procedures using twelve experimentaldata sets with not necessarily continuous data. As there are few benchmark data sets for one-class classification, all data sets considered in the evaluation have multiple classes. Each class in turn is considered as thetarget class and the units in the other classes are considered as new units to be classified. The results of the comparison show the good performance of the typicality approach, which is available for high dimensionaldata; it is worth mentioning that it can be used for any kind of data (continuous, discrete, or nominal), whereas state-of-the-art approaches application is not straightforward when nominal variables are present.
机译:在单级分类(OCC)的问题中,必须与所有其他可能的对象区分地区的类,被认为是非的。在许多生物医学问题中,这种情况出现,例如,在诊断,基于图像的肿瘤识别或心电图数据分析中。在本文中,基于典型性测试的方法与参考最先进的OCC技术 - 高斯,高斯,天真巴森,平原和支持矢量数据描述 - 使用生物医学数据集进行实验。我们评估使用十二个实验Data集的程序的能力,不一定是连续数据。由于单级分类的基准数据集很少,评估中考虑的所有数据集都具有多个类。每个班级又被认为是Thetarget类,其他类中的单位被视为要分类的新单元。比较结果表明了典型的方法的良好性能,可用于高维地数据;值得一提的是,它可以用于任何类型的数据(连续,离散或标称),而当存在标称变量时,最先进的方法应用并不直接。

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