Article ID Journal Published Year Pages File Type
7619820 Journal of Food Composition and Analysis 2018 27 Pages PDF
Abstract
Reliable discrimination of the geographical origin of tea, especially very well-known teas, is crucial for market developing and consumer rights' protection. In this study, multi-element contents and stable isotope signatures in the flat-shaped green tea samples collected from different producing areas were assayed. Linear discrimination analysis (LDA), partial least squares discrimination analysis (PLS-DA), and a decision tree (DT) were tested for their ability to discriminate the tea's geographical origin. Under the validation by cross-validation and “blind” dataset, the prediction accuracies of the three methods were all greater than 70%. The DT method showed the best performance, with an accuracy of 90%. Furthermore, for the discrimination of Xihu Longjing (XHLJ) green tea, DT also showed the lowest error rate of 1.5% (1 of 67 wrongly classified to XHLJ), which was better than the 6% rate observed for PLS-DA.
Related Topics
Physical Sciences and Engineering Chemistry Analytical Chemistry
Authors
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