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Evaluating Wine-Tasting Results and Randomness with a Mixture of Rank Preference Models

机译:混合使用等级偏好模型评估品酒结果和随机性

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Evaluating observed wine-tasting results as a mixture distribution, using linear regression on a transformation of observed results, has been described in the wine-tasting literature. This article advances the use of mixture models by considering that existing work, examining five analyses of ranking and mixture model applications to non-wine food tastings and then deriving a mixture model with specific application to observed wine-tasting results. The mixture model is specified with Plackett-Luce probability mass functions, solved with the expectation maximization algorithm that is standard in the literature, tested on a hypothetical set of wine ranks, tested with a random-ranking Monte Carlo simulation, and then employed to evaluate the results of a blind tasting of Pinot Gris by experienced tasters. The test on a hypothetical set of wine ranks shows that a mixture model is an accurate predictor of observed rank densities. The Monte Carlo simulation yields confirmatory results and an estimate of potential Type I errors (the probability that tasters appear to agree although ranks are actually random). Application of the mixture model to the tasting of Pinot Gris, with over a 95% level of confidence based on the likelihood ratio and t statistics, shows that agreement among tasters exceeds the random expectation of illusory agreement.
机译:在品酒文献中已经描述了使用线性回归对所观察到的结果进行转换来评估作为混合物分布的所观察到的品酒结果。本文通过考虑现有工作来推进混合模型的使用,检查对非葡萄酒品尝的排名和混合模型应用程序的五种分析,然后推导针对观察到的葡萄酒品尝结果的特定应用程序的混合模型。用Plackett-Luce概率质量函数指定混合模型,使用文献中标准的期望最大化算法求解,在假设的葡萄酒等级集上进行测试,通过随机排名的蒙特卡洛模拟进行测试,然后用于评估经验丰富的品尝者盲品黑皮诺的结果。对一组假设的葡萄酒等级进行的测试表明,混合模型是所观察等级密度的准确预测指标。蒙特卡洛模拟产生了确定性的结果,并估计出了潜在的I类错误(尽管排名实际上是随机的,但品尝者似乎同意的概率)。将混合模型用于品酒比诺葡萄酒,根据似然比和t统计,置信度超过95%,表明品酒师之间的一致性超出了对错觉一致性的随机预期。

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