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Multivariate authentication of the geographical origin of wines: a kernel SVM approach

机译:葡萄酒地理来源的多变量验证:内核SVM方法

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摘要

During the WineDB European project, wine samples from four countries and three different vintages have been collected and their chemical content for 63 parameters was analyzed. The possibility to determine the country of origin of wines based on their chemical content was investigated during the project and the results from two multivariate classification techniques, namely partial least squares-discriminant analysis and kernel support vector machines, are described and compared. Attention has been paid to the development of efficient models in terms of cost of analysis and the problem of variable selection is considered. In particular, the kernel SVM approach leads to models which can reduce the annual updating effort of the classification models since a unique set of parameters can be used to discriminate authentic wines from different countries and different years of production, which is not the case when only PLS-DA is applied.
机译:在WineDB欧洲项目期间,已收集了来自四个国家和三个不同年份的葡萄酒样品,并对63个参数的化学含量进行了分析。在项目过程中,研究了根据其化学含量确定葡萄酒原产国的可能性,并描述和比较了两种多元分类技术的结果,即偏最小二乘判别分析和核支持向量机。在分析成本方面,人们已经注意到有效模型的开发,并考虑了变量选择的问题。特别是,内核支持向量机方法导致了可以减少分类模型每年更新工作量的模型,因为可以使用一组独特的参数来区分来自不同国家和不同生产年份的正宗葡萄酒,而仅当应用PLS-DA。

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