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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Application of non-negative matrix factorization combined with Fisher's linear discriminant analysis for classification of olive oil excitation-emission fluorescence spectra
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Application of non-negative matrix factorization combined with Fisher's linear discriminant analysis for classification of olive oil excitation-emission fluorescence spectra

机译:非负矩阵分解与Fisher线性判别分析相结合在橄榄油激发-发射荧光光谱分类中的应用

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摘要

Non-negative matrix factorization (NMF) is a technique that decomposes multivariate data into a smaller number of basis functions and encodings using non-negative constraints. These constraints make that only positive solutions can be obtained and thus this method provides a more realistic approximation to the original data than other factorization methods that allow positive and negative values. Here we show that NMF is a powerful technique for learning a meaningful parts-based representation of the fluorescence excitation-emission matrices (EEMs) of different sets of olive oils. The capabilities of NMF used together with Fisher's LDA for discriminating between various types of oils were also studied. In all cases, good classifications were obtained (90-100percent). The classification results obtained with the proposed method were compared to those obtained using two other classification methods (parallel factor analysis (PARAFAC) combined with Fisher's LDA and discriminant multi-way partial least squares regression (DN-PLSR)).
机译:非负矩阵分解(NMF)是一种使用非负约束将多变量数据分解为较少数量的基函数和编码的技术。这些约束使得只能获得正解,因此,与允许正负值的其他分解方法相比,该方法对原始数据的逼真度更高。在这里,我们显示NMF是一项功能强大的技术,可用于学习不同组橄榄油的荧光激发-发射矩阵(EEM)的有意义的基于部分的表示形式。还研究了NMF与Fisher的LDA一起用于区分各种类型油品的能力。在所有情况下,均获得了良好的分类(90-100%)。将通过建议的方法获得的分类结果与使用其他两种分类方法(并行因子分析(PARAFAC)结合Fisher的LDA和判别式多方偏最小二乘回归(DN-PLSR))获得的结果进行比较。

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