A common issue for classification in scientific research and industry is the existence of imbalanced classes. When sample sizes of different classes are imbalanced in training data, naively implementing a classification method often leads to unsatisfactory prediction results on test data. Multiple resampling techniques have been proposed to address the class imbalance issues. Yet, there is no general guidance on when to use each technique. In this article, we provide a paradigm-based review of the common resampling techniques for binary classification under imbalanced class sizes. The paradigms we consider include the classical paradigm that minimizes the overall classification error, the cost-sensitive learning paradigm that minimizes a cost-adjusted weighted type I and type II errors, and the Neyman-Pearson paradigm that minimizes the type II error subject to a type I error constraint. Under each paradigm, we investigate the combination of the resampling techniques and a few state-of-the-art classification methods. For each pair of resampling techniques and classification methods, we use simulation studies and a real data set on credit card fraud to study the performance under different evaluation metrics. From these extensive numerical experiments, we demonstrate under each classification paradigm, the complex dynamics among resampling techniques, base classification methods, evaluation metrics, and imbalance ratios. We also summarize a few takeaway messages regarding the choices of resampling techniques and base classification methods, which could be helpful for practitioners.
翻译:科学研究和工业分类的一个共同问题是存在不平衡的类别。当不同类别抽样规模在培训数据中出现不平衡时,天真地采用分类方法往往导致测试数据中的预测结果不令人满意。提出了多种抽样技术来解决阶级不平衡问题。然而,对于每种技术何时使用,没有一般性的指导。在本条中,我们对在不平衡的类别规模下进行二进制分类的通用重新抽样技术进行基于范式的审查。我们认为,这些范式包括尽量减少总体分类错误的典型范例、尽量减少成本调整的第一类和第二类加权误差的成本敏感学习模式,以及尽量减少第二类误差的内曼皮尔逊模式。在每种模式下,我们调查重新抽样技术与少数最先进的分类方法的结合。对于每对一类重新抽样技术和分类方法,我们使用模拟研究和关于信用卡欺诈的真实数据集来研究不同评价指标下的业绩。从这些广泛的数字实验中,我们展示了各种分类方法的不平衡性、复杂的动态比率。我们用这些方法来总结各种分类方法。