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Nonlinear Feature Extraction Through Manifold Learning in an Electronic Tongue Classification Task

机译:电子舌分类任务中歧管学习的非线性特征提取

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摘要

A nonlinear feature extraction-based approach using manifold learning algorithms is developed in order to improve the classification accuracy in an electronic tongue sensor array. The developed signal processing methodology is composed of four stages: data unfolding, scaling, feature extraction, and classification. This study aims to compare seven manifold learning algorithms: Isomap, Laplacian Eigenmaps, Locally Linear Embedding (LLE), modified LLE, Hessian LLE, Local Tangent Space Alignment (LTSA), and t-Distributed Stochastic Neighbor Embedding (t-SNE) to find the best classification accuracy in a multifrequency large-amplitude pulse voltammetry electronic tongue. A sensitivity study of the parameters of each manifold learning algorithm is also included. A data set of seven different aqueous matrices is used to validate the proposed data processing methodology. A leave-one-out cross validation was employed in 63 samples. The best accuracy (96.83%) was obtained when the methodology uses Mean-Centered Group Scaling (MCGS) for data normalization, the t-SNE algorithm for feature extraction, and k-nearest neighbors (kNN) as classifier.
机译:开发使用歧管学习算法的基于非线性特征提取的方法,以提高电子舌传感器阵列中的分类精度。开发的信号处理方法由四个阶段组成:数据展开,缩放,特征提取和分类。本研究旨在比较七种流形学习算法:ISOMAP,Laplacian eIgenmaps,局部线性嵌入(LLE),改进的LLE,HESSIAN LLE,局部切线空间对准(LTSA)和T分布式随机邻居嵌入(T-SNE)。多频性大幅度脉冲伏安电子舌中的最佳分类精度。还包括每个歧管学习算法的参数的灵敏度研究。七种不同的水矩阵的数据集用于验证所提出的数据处理方法。在63个样品中使用了休假交叉验证。当方法使用平均居中组缩放(MCG)时,获得最佳精度(96.83%)进行数据归一化,特征提取的T-SNE算法,以及作为分类器的K-Collect邻居(KNN)。

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