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Recursive feature elimination in Raman spectra with support vector machines 被引量:1
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作者 bernd kampe Sandra KLOβ +2 位作者 Thomas BOCKLITZ Petra ROSCH Jurgen POPP 《Frontiers of Optoelectronics》 EI CSCD 2017年第3期273-279,共7页
The presence of irrelevant and correlated data points in a Raman spectrum can lead to a decline in classifier performance. We introduce support vector machine (SVM)-based recursive feature elimination into the field... The presence of irrelevant and correlated data points in a Raman spectrum can lead to a decline in classifier performance. We introduce support vector machine (SVM)-based recursive feature elimination into the field of Raman spectroscopy and demonstrate its performance on a data set of spectra of clinically relevant microorganisms in urine samples, along with patient samples. As the original technique is only suitable for two-class problems, we adapt it to the multi-class setting. It is shown that a large amount of spectral points can be removed without degrading the prediction accuracy of the resulting model notably. 展开更多
关键词 feature selection Raman spectroscopy pat-tern recognition CHEMOMETRICS
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