Food and beverage authentication is the process by which foods or beverages are verified as complying with its label description, for example, verifying if the denomination of origin of an olive oil bottle is correct or if the variety of a certain bottle of wine matches its label description. The common way to deal with an authentication process is to measure a number of attributes on samples of food and then use these as input for a classification problem. Our motivation stems from data consisting of measurements of nine chemical compounds denominated Anthocyanins, obtained from samples of Chilean red wines of grape varieties Cabernet Sauvignon, Merlot and Carm\'{e}n\`{e}re. We consider a model-based approach to authentication through a semiparametric multivariate hierarchical linear mixed model for the mean responses, and covariance matrices that are specific to the classification categories. Specifically, we propose a model of the ANOVA-DDP type, which takes advantage of the fact that the available covariates are discrete in nature. The results suggest that the model performs well compared to other parametric alternatives. This is also corroborated by application to simulated data.
翻译:食品和饮料认证是核实食品或饮料是否符合其标签说明的过程,例如,核实橄榄油瓶的产地名称是否正确,或某瓶葡萄酒的种类是否与其标签说明相符。处理认证过程的常见方法是测量食品样品的若干属性,然后将这些属性用作分类问题的投入。我们的动机来自从智利葡萄品种Cabernet Sauvignon、Merlot和Carm\'{{e}en}ere的红葡萄酒样本中提取的九种以安索西亚宁命名的化学化合物的测量数据。我们考虑通过半参数多变等级混合模型对平均反应进行认证,并采用与分类类别具体相关的共变矩阵。具体地说,我们提出了一个ANOVA-DDP类型的模型,该模型利用了现有可变数的性质上的差异。结果表明,该模型与其他参数替代品相比,表现良好。这也通过应用模拟数据得到证实。