不平衡数据集重采样技术在学生辍学预测中的比较

Sheikh Masood, S. Begum
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引用次数: 1

摘要

学生辍学预测(SDP)问题的挑战之一是数据不平衡,这降低了机器学习(ML)分类器在预测辍学学生时的效率。多数类(多样本)和少数类(少样本)之间的样本分布不成比例导致了类不平衡问题,这是分类问题中的一个重大挑战。当数据集高度不平衡时,机器学习分类器给出了很高的准确性,因为它们主要从大多数类中学习。因此,准确度可能并不总是给出关于训练模型的正确见解。本文介绍了在数据预处理水平上处理不平衡数据的几种重采样技术的研究结果。在本研究中,机器学习算法,即逻辑回归和支持向量机(SVM),在二元分类问题的不同性能评估指标上,已被用于预测少数类。研究发现,曲线下面积(AUC)分数在预测少数民族班级的其他考虑指标中给出了最可靠的结果,即学生的辍学率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Resampling Techniques for Imbalanced Datasets in Student Dropout Prediction
One of the challenges in the Student Dropout Prediction (SDP) problem is imbalanced data, which reduces the efficiency of the Machine Learning (ML) classifier when predicting dropout students. The disproportionate distribution of samples between the majority class (more samples) and the minority class (fewer samples) causes the class imbalance problem, which is a significant challenge in classification problems. When a dataset is highly imbalanced, the ML classifiers give high accuracy as they learn mostly from the majority class. Hence, the accuracy may not always give correct insight about the trained model. In this paper, the findings of the study of several resampling techniques for handling imbalanced data at the data preprocessing level are presented. The Machine learning algorithms, viz. Logistic Regression and Support Vector Machine (SVM), over different performance evaluation metrics for binary classification problems, have been used in the present study to predict the minority class. It is found that the Area Under Curve (AUC) score gives the most reliable result amongst the other considered metrics for predicting the minority class, i.e., the dropout rate of the students.
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