基于数据挖掘的意大利皮埃蒙特优质葡萄酒真实性评估与保护

M. Arlorio, J. Coïsson, G. Leonardi, M. Locatelli, L. Portinale
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引用次数: 2

摘要

本文讨论了一个名为TRAQUASwine的项目所采用的数据挖掘方法,该项目旨在定义数据分析评估方法,以评估来自意大利皮埃蒙特地区的一些最高价值的内比奥葡萄酒的真实性和防伪。这在葡萄酒市场是一个大问题,与此类产品相关的商业欺诈估计价值数百万欧元。其目的有两个:一是证明这个问题可以在没有昂贵和高度专业化的葡萄酒分析的情况下得到解决,二是证明分类算法对所得到的化学特征进行数据挖掘的实际有用性。根据Wagstaff关于实际利用机器学习(和数据挖掘)方法的建议,我们描述了如何收集和准备数据以生产不同的数据集,如何确定合适的分类模型,以及如何解释结果表明基于标准化学分析的分类技术的积极作用的出现,以评估研究目标葡萄酒的真实性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Data Mining for Authenticity Assessment and Protection of High-Quality Italian Wines from Piedmont
This paper discusses the data mining approach followed in a project called TRAQUASwine, aimed at the definition of methods for data analytical assessment of the authenticity and protection, against fake versions, of some of the highest value Nebbiolo-based wines from Piedmont region in Italy. This is a big issue in the wine market, where commercial frauds related to such a kind of products are estimated to be worth millions of Euros. The objective is twofold: to show that the problem can be addressed without expensive and hyper-specialized wine analyses, and to demonstrate the actual usefulness of classification algorithms for data mining on the resulting chemical profiles. Following Wagstaff's proposal for practical exploitation of machine learning (and data mining) approaches, we describe how data have been collected and prepared for the production of different datasets, how suitable classification models have been identified and how the interpretation of the results suggests the emergence of an active role of classification techniques, based on standard chemical profiling, for the assesment of the authenticity of the wines target of the study.
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