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A classification approach with different feature sets to predict the quality of different types of wine using machine learning techniques

机译:使用机器学习技术的具有不同特征集的分类方法来预测不同类型葡萄酒的质量

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In the past few years, with the availability of lot of wine brands it is difficult to identify the good quality wines. Good quality wine depends on the so many important factors such as chemical, scientific as well as technical factors. However in the previous study the researchers always focus on the subjective study to define the quality of wine. The result based on the subjective study takes much time as well as it is not effective compared to the objective study with the analytical methods. In the last few year's machine learning techniques caught lot of attention in every field. Most of the machines learning techniques are able to produce highly accurate result that compels most of the data scientist to implement it in case of predictive analytics. In the past few works related to wine data has been studied using different classifiers, however so far nobody has compared the performance metrics of the different classifiers with different feature sets to predict the quality of different type of wine by considering several factors. In this paper a new approach has been proposed by considering different feature selection algorithm such as Principal Component Analysis (PCA) as well as Recursive Feature Elimination approach (RFE) approach for feature selection and nonlinear decision tree based classifiers for analyzing the performance metrics. We found accuracies ranging from 94.51% to 97.79% with different feature sets using Random Forest classifier. This analysis will help the wine experts to know the important factors to consider while selecting the good quality wine.
机译:在过去的几年中,随着众多葡萄酒品牌的出现,很难确定优质葡萄酒。优质葡萄酒取决于许多重要因素,例如化学,科学和技术因素。但是,在先前的研究中,研究人员始终专注于主观研究以定义葡萄酒的质量。与基于分析方法的客观研究相比,基于主观研究的结果要花费大量时间,而且效果不佳。在过去的几年中,机器学习技术在各个领域引起了广泛的关注。大多数机器学习技术都能够产生高度准确的结果,从而迫使大多数数据科学家在进行预测分析时实施该结果。过去,很少有人使用不同的分类器研究与葡萄酒数据相关的作品,但是到目前为止,还没有人通过考虑几个因素来比较具有不同特征集的不同分类器的性能指标来预测不同类型葡萄酒的质量。在本文中,通过考虑不同的特征选择算法(例如主成分分析(PCA)和递归特征消除方法(RFE)方法用于特征选择)以及基于非线性决策树的分类器来分析性能指标,提出了一种新方法。使用随机森林分类器,我们发现具有不同特征集的准确度从94.51%到97.79%。这种分析将帮助葡萄酒专家了解选择优质葡萄酒时要考虑的重要因素。

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