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A new Mercer sigmoid kernel for clinical data classification

机译:用于临床数据分类的新型Mercer乙状结肠核

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In classification with Support Vector Machines, only Mercer kernels, i.e. valid kernels, such as the Gaussian RBF kernel, are widely accepted and thus suitable for clinical data. Practitioners would also like to use the sigmoid kernel, a non-Mercer kernel, but its range of validity is difficult to determine, and even within range its validity is in dispute. Despite these shortcomings the sigmoid kernel is used by some, and two kernels in the literature attempt to emulate and improve upon it. We propose the first Mercer sigmoid kernel, that is therefore trustworthy for the classification of clinical data. We show the similarity between the Mercer sigmoid kernel and the sigmoid kernel and, in the process, identify a normalization technique that improves the classification accuracy of the latter. The Mercer sigmoid kernel achieves the best mean accuracy on three clinical data sets, detecting melanoma in skin lesions better than the most popular kernels; while with non-clinical data sets it has no significant difference in median accuracy as compared with the Gaussian RBF kernel. It consistently classifies some points correctly that the Gaussian RBF kernel does not and vice versa.
机译:在支持向量机的分类中,只有Mercer核,即有效核,例如高斯RBF核,被广泛接受,因此适合于临床数据。从业者也希望使用非Mercer内核的S形内核,但是其有效范围难以确定,甚至在其范围内也存在争议。尽管存在这些缺点,但仍有一些人使用了S形内核,文献中有两个内核试图对其进行模仿和改进。我们提出了第一个Mercer乙状结肠核,因此对于临床数据的分类是值得信赖的。我们展示了Mercer乙状结肠内核和乙状结肠内核之间的相似性,并在此过程中确定了可提高后者分类精度的归一化技术。美世乙状结肠核在三个临床数据集上均达到了最佳的平均准确度,比最流行的核能更好地检测皮肤病变中的黑色素瘤。而使用非临床数据集时,与高斯RBF内核相比,其中位数准确性没有显着差异。它始终如一地正确分类高斯RBF内核不能正确分类的某些点,反之亦然。

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