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首页> 外文期刊>Analytica chimica acta >Multi-level data fusion strategies for modeling three-way electrophoresis capillary and fluorescence arrays enhancing geographical and grape variety classification of wines
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Multi-level data fusion strategies for modeling three-way electrophoresis capillary and fluorescence arrays enhancing geographical and grape variety classification of wines

机译:用于模拟三元电泳毛细管和荧光阵列的多级数据融合策略,增强了葡萄酒的地理和葡萄品种分类

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摘要

Capillary electrophoresis with diode array detection (CE-DAD) and multidimensional fluorescence spectroscopy (EEM) second-order data were fused and chemometrically processed for geographical and grape variety classification of wines. Multi-levels data fusion strategies on three-way data were evaluated and compared revealing their advantages/disadvantages in the classification context. Straightforward approaches based on a series of data preprocessing and feature extraction steps were developed for each studied level. Partial least square discriminant analysis (PLS-DA) and its multi-way extension (NPLS-DA) were applied to CE-DAD, EEM and fused data matrices structured as two-way and three-way arrays, respectively. Classification results achieved on each model were evaluated through global indices such as average sensitivity non-error rate and average precision. Different degrees of improvement were observed comparing the fused matrix results with those obtained using a single one, clear benefits have been demonstrated when level of data fusion increases, achieving with the high-level strategy the best classification results. (C) 2020 Elsevier B.V. All rights reserved.
机译:具有二极管阵列检测(CE-DAD)和多维荧光光谱(EEM)二阶数据的毛细管电泳是融合和化学处理的葡萄酒的地理和葡萄品种分类。在三元数据上进行了多级数据融合策略,并比较了分类背景下的优势/缺点。为每个研究的水平开发了基于一系列数据预处理和特征提取步骤的直接方法。局部最小二乘判别分析(PLS-DA)及其多向扩展(NPLS-DA)分别应用于作为双向和三通阵列的CE-DAD,EEM和融合数据矩阵。通过全局指数评估每个模型上实现的分类结果,例如平均灵敏度非错误率和平均精度。观察到不同程度的改进,将熔融矩阵结果与使用单一获得的那些进行比较,当数据融合水平增加时已经证明了清晰的益处,实现了高级策略的最佳分类结果。 (c)2020 Elsevier B.V.保留所有权利。

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