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SUPPORT VECTOR MACHINE-BASED METHOD FOR ANALYSIS OF SPECTRAL DATA

机译:基于支持向量机的光谱数据分析方法

摘要

Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
机译:支持向量机用于对结构化数据集中包含的数据进行分类,例如由频谱分析仪生成的多个信号。信号经过预处理以确保光谱中的峰对齐。构建相似性度量以为比较信号样本对提供基础。支持向量机经过训练可以区分不同类别的样本。以确定光谱中最具预测性的特征。在优选实施例中,执行特征选择以减少必须考虑的特征的数量。

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