Construction of Wine Quality Prediction Model based on Machine Learning Algorithm

Haoyu Zhang, Zhile Wang, Jiawei He, Jijiao Tong
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引用次数: 1

Abstract

In the study, our group choose a set of quality of red wine as data set. To get a more accurate result, we turn the quality into binary classification. And we try to build models to predict the quality of red wine based on machine learning algorithms, including Decision Tree, Boosting, Classification and regression tree and Random Forest. Among them, CART and Random Forest both get a high accuracy. A binary tree is built with CART and feature importance is analyzed. Meanwhile, we try to combine logistic algorithm with Random Forest and compare the accuracy of different models. In this way, it's found that there is a way to improve the accuracy of these models.
基于机器学习算法的葡萄酒质量预测模型构建
在研究中,我们小组选择了一组红酒的质量作为数据集。为了得到更准确的结果,我们将质量转化为二值分类。我们尝试建立基于机器学习算法的模型来预测红酒的质量,包括决策树、提升、分类和回归树以及随机森林。其中CART和Random Forest的准确率都很高。利用CART建立了二叉树,并对特征重要性进行了分析。同时,我们尝试将logistic算法与随机森林相结合,并比较了不同模型的准确率。从而发现了提高这些模型精度的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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