首页> 外文期刊>Analytica chimica acta >COMPARISON OF REGULARIZED DISCRIMINANT ANALYSIS, LINEAR DISCRIMINANT ANALYSIS AND QUADRATIC DISCRIMINANT ANALYSIS, APPLIED TO NIR DATA
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COMPARISON OF REGULARIZED DISCRIMINANT ANALYSIS, LINEAR DISCRIMINANT ANALYSIS AND QUADRATIC DISCRIMINANT ANALYSIS, APPLIED TO NIR DATA

机译:应用于NIR数据的正则化鉴别分析,线性鉴别分析和二次鉴别分析的比较

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摘要

Three classifiers, namely linear discriminant analysis (LDA), quadratic discriminant analysis (QDA) and regularized discriminant analysis (RDA) are considered in this study for classification bases on NIR data. Because NIR data sets are severely ill-conditioned, the three methods cannot be directly applied. A feature selection method was used to reduce the data dimensionality, and the selected features were used as the input of the classifiers. RDA can be considered as an intermediate method between LDA and QDA, and in several cases, RDA reduces to either LDA or QDA depending on which is better. In some other cases, RDA is somewhat better. However, optimization is time consuming. It is therefore concluded that in many cases, LDA or QDA should be recommended for practical use, depending on the characteristics of the data. However, in those cases where even small gains in classification quality are important, the application of RDA might be useful. [References: 13]
机译:对于基于NIR数据的分类,本研究考虑了三个分类器,即线性判别分析(LDA),二次判别分析(QDA)和正则判别分析(RDA)。由于NIR数据集病情严重,因此无法直接应用这三种方法。特征选择方法用于减少数据维数,所选特征用作分类器的输入。可以将RDA视为LDA和QDA之间的中间方法,在某些情况下,RDA可以降低为LDA或QDA,这取决于哪个更好。在其他一些情况下,RDA会更好一些。但是,优化非常耗时。因此得出的结论是,在许多情况下,应根据数据的特性建议实际使用LDA或QDA。但是,在那些即使很小的分类质量提升都很重要的情况下,RDA的应用也可能会有用。 [参考:13]

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