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Support Vector Machines with the Correlation Kernel for the Classification of Raman Spectra

机译:具有相关核的支持向量机用于拉曼光谱分类

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The range of applications of Raman-based classification has expanded significantly, including applications in bacterial identification. The first stage in the classification of Raman spectra is commonly some form of preprocessing. This pre-processing greatly affects the accuracy of the results and introduces user bias and over-fitting effects. In this paper, we propose the use of Support Vector Machines with a novel correlation kernel. Results, obtained from the analysis of Raman spectra of bacteria, illustrate that the correlation kernel is "self-normalizing" and produces superior classification performance with minimal pre-processing, even on highly-noisy data obtained using inexpensive equipment. In addition, the performance does not degrade when applied to distinct test sets, a key feature of a clinically viable diagnostic application of Raman Spectroscopy.
机译:基于拉曼分类的应用范围已大大扩展,包括在细菌鉴定中的应用。拉曼光谱分类的第一阶段通常是某种形式的预处理。这种预处理极大地影响了结果的准确性,并引入了用户偏见和过度拟合的效果。在本文中,我们提出将支持向量机与新型相关内核一起使用。从细菌的拉曼光谱分析中获得的结果表明,即使使用廉价设备获得的高噪声数据,相关核仍可“自我归一化”,并且只需最少的预处理即可产生出色的分类性能。此外,当应用于不同的测试集时,性能不会降低,这是拉曼光谱学在临床上可行的诊断应用程序的关键特征。

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