Jovial Niyogisubizo, Jean de Dieu Ninteretse, Eric Nziyumva, Marc Nshimiyimana, Evariste Murwanashyaka, Erneste Habiyakare
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引用次数: 0
摘要
消费者和葡萄酒行业对葡萄酒质量的关注与日俱增。传统上,葡萄酒专家通过品尝来确定葡萄酒的质量,这非常耗时。因此,有必要根据特定的关键特征来预测葡萄酒的质量,以简化这些任务。机器学习(ML)方法等技术的发展已经用计算方法取代了人工评估。然而,其中一些方法由于准确度低和缺乏可解释性而受到批评。本文介绍了一种堆叠集合方法,与其他分类技术(如逻辑回归(LR)、决策树(DT)、梯度提升(GB)、自适应提升(AdaBoost)和随机森林(RF))相比,该方法显示出卓越的预测性能。该评估基于相同条件下的分类指标,如准确率、精确度、召回率和 F1 分数。此外,还采用了离群点检测算法来识别特殊或不合格的葡萄酒,尽管其结果与分类方法的准确性不符。最后,还进行了特征分析研究,以评估每个特征在模型性能中的重要性。
Towards Predicting the Quality of Red Wine Using Novel Machine Learning Methods for Classification, Data Visualization and Analysis
here is a growing concern among consumers and the wine industry regarding the quality of wine. Traditionally, wine experts determined its quality through tasting, which was time-consuming. Therefore, there is a need to predict wine quality based on specific key features to streamline these tasks. Technological developments like machine learning (ML) approaches have replaced human assessments with computational methods. However, some of these methods have faced criticism due to their low accuracy and lack of interpretability for humans. In this paper, a stacking ensemble method is introduced and demonstrates superior predictive performance when compared to other classification techniques like Logistic Regression (LR), Decision Trees (DT), Gradient Boosting (GB), Adaptive Boosting (AdaBoost), and Random Forest (RF). This evaluation is based on classification metrics such as accuracy, precision, recall, and F1-Score, all under the same conditions. Additionally, outlier detection algorithms were employed to identify exceptional or subpar wines, though their results did not match the accuracy of classification approaches. Lastly, a feature analysis study was conducted to assess the significance of each feature in the model's performance.