重新审视具有不平衡类分布的诊断应用的ROC曲线

C. O'Reilly, T. Nielsen
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引用次数: 13

摘要

本通讯调查了对分类器评价的影响,正面和负面类别之间的高度不对称。指出了使用混淆矩阵定义的阈值相关统计报告分类器性能时需要注意的一些事项。它强调,在高度不平衡的数据集中,报告阳性预测值(PPV)比报告特异性更合适。更复杂的变量,如f值和马修斯相关系数,也可能提供可靠的描述。它进一步得出结论,在许多情况下,只有一小部分的受试者工作特性(ROC)曲线实际上是有用的,除非非常低的PPV被认为是可接受的。提出了两种补救措施来补充ROC曲线:使用正权衡曲线(此处定义)或在ROC图上添加等PPV线(即恒定PPV线)。本研究报告的观察结果有助于理解不对称对分类器性能的影响。在处理高度不对称的问题时,他们还对使用ROC曲线下的面积进行阈值独立评估分类器性能的相关性提出了一些怀疑。
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Revisiting the ROC curve for diagnostic applications with an unbalanced class distribution
This communication investigates the impact on classifier evaluation of a high asymmetry between positive and negatives classes. It points out some necessary precautions when reporting classifier performances using threshold-dependent statistics defined with the confusion matrix. It stresses that, in highly unbalanced datasets, reporting the positive predictive value (PPV) is more appropriate than reporting specificity. More elaborate variables such as F-measure and Matthews' correlation coefficient may also provide a reliable portrait. It further concludes that, in many cases, only a small portion of the receiver operating characteristic (ROC) curve is actually useful, unless very low PPV are judged acceptable. Two remedies are proposed to complement the ROC curve: using a positive tradeoff curve (defined herein) or adding iso-PPV lines (i.e., lines of constant PPV) on the ROC graph. The observations reported in this study contribute to understanding of the impact of asymmetry on classifier performances. They also cast some doubt on the pertinence, when dealing with highly asymmetric problems, of using the area under the ROC curve for threshold-independent assessment of classifier performances.
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