用分层支持向量机进行多等级葡萄酒等级预测

Bernard Chen, Clifford A. Tawiah, James Palmer, Recep Erol
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引用次数: 1

摘要

通过线性核支持向量机(svm),利用葡萄酒评论中发现的重要葡萄酒属性来预测葡萄酒的等级。在这项工作中,成绩预测被定义为一个多类问题,有四个类:100 ~ 95、94 ~ 90、89 ~ 85和84以下。由于支持向量机本质上是二值分类,所以多类问题采用分层方法解决。我们的数据集收集了超过10万种葡萄酒。基于本文所建立的两层支持向量机模型,我们对葡萄酒的等级预测达到了较高的准确率。覆盖率通常是一个多标签度量,也适用于评估这些结果。据我们所知,这是第一次将多类问题应用到葡萄酒信息学中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-class wine grades predictions with hierarchical support vector machines
Important wine attributes found in wine reviews are used to predict a wine's grade through linear kernel support vector machines (SVMs). In this work, grade prediction is defined as a multi-class problem with four classes: 100∼95, 94∼90, 89∼85 and 84 below. Since SVMs inherently do binary classification, the multi-class problem is solved using a hierarchical approach. More than 100,000 wines are collected as our dataset. Based on the two-layer SVM model which is built in this study, we accomplish high accuracy on predicting a wine's grade. Coverage, which is usually a multi-label metric, is also adapted to evaluate these results. To the best of our knowledge, it is the first time that multi-class problem is applied to Wineinformatics.
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