提高 C4.5 算法模型准确性的合成少数群体过度取样技术 (SMOTE)

Wiwi Rahayu, Deny Jollyta, Alyauma Hajjah, Johan, Gusrianty, Gustientiedina, Yulvia Nora Marlim, Y. Desnelita
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引用次数: 0

摘要

分类模型准确率低的原因可能是数据集不平衡。实际上,低准确率模型是不可接受的。本研究的目的是解决使用 C4.5 方法识别的员工绩效数据集中的数据不平衡问题。SMOTE 是解决数据不平衡的方法。利用 SMOTE 生成大量多数类或少数类数据,其初始分类准确率仅为 17%。C4.5 算法对 SMOTE 创建的新数据集进行分类,该数据集由 11 个属性组成,在训练数据和测试数据之间进行三次划分。研究发现,在数据比例为 60:40 时,分类模型的准确率为 69%。数据分割比例为 70:30 时,模型准确率攀升至 76%,最终分割比例为 80:20,准确率为 86%。该模型的输出结果与使用混淆矩阵获得的评估结果相吻合。研究结果表明,SMOTE 可以通过增强不平衡类的数据来提高分类模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic Minority Oversampling Technique (SMOTE) for Boosting the Accuracy of C4.5 Algorithm Model
The low accuracy of the classification model may be caused by dataset imbalance. In reality, low-accuracy models are unacceptable. The purpose of this research is to address data imbalances in an employee performance dataset identified using the C4.5 method. SMOTE is the approach for addressing data imbalance. SMOTE is utilized to generate a large amount of data in the majority or minority class, which has an initial classification accuracy of just 17%. The C4.5 algorithm classifies the new dataset created by SMOTE, which consists of 11 attributes divided three times between training and testing data. The research found that with a 60:40 data split, the classification model had a 69% accuracy. Model accuracy climbed to 76% at 70:30 data splitting, and 86% at the final splitting, which was 80:20. The model's output matches the evaluation findings obtained using the confusion matrix. The research findings indicate that SMOTE may improve classification model accuracy by boosting data in imbalanced classes.
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