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Scores selection via Fisher's discriminant power in PCA-LDA to improve the classification of food data

机译:通过Fisher在PCA-LDA中的判别能力进行分数,以改善食品数据的分类

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摘要

This paper proposes an adaptation of the Fisher's discriminability criterion (named here as discriminant power, DP) for choosing principal components (obtained from Principal Component Analysis, PCA), which will be used to construct supervised Linear Discriminant Analysis (LDA) models for solving classification problems of food data. The proposed PCA-DP-LDA algorithm was then applied to (i) simulated data, (ii) classify soybean oils with respect to expiration date, and (iii) identify cachaca adulteration with wood extracts that simulated aging. For comparison, PCA-DP-LDA was evaluated against conventional PCA-LDA (based on explained variance) and Partial Least Squares-Discriminant Analysis (PLS-DA). Among them, PCA-DP-LDA achieved the most parsimonious and interpretable results, with similar or better classification performance. Therefore, the new algorithm can be considered a good alternative to the already well-established discriminant methods, being potentially applied where the discriminability of the principal components may not follow the same behavior of the explained variance.
机译:本文提出了对选择主要成分(从主成分分析,PCA获得的PCA)来构建Fisher的可辨认性标准(此处作为判别权力,DP),该组件将用于构建用于解决分类的监督线性判别分析(LDA)模型食物数据问题。然后将所提出的PCA-DP-LDA算法应用于(I)模拟数据,(ii)对豆油相对于有效期进行分类,(III)鉴定模拟老化的木质提取物的Cachaca掺杂。为了进行比较,对传统PCA-LDA(基于所述差异)和局部最小二乘判别分析(PLS-DA)评估PCA-DP-LDA。其中,PCA-DP-LDA实现了最具典范和可解释的结果,具有相似或更好的分类性能。因此,新算法可以被认为是已经良好的识别判别方法的良好替代方法,其可能应用于主组件的可判断性可能不遵循所解释的方差的相同行为。

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