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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >THE USE OF THE AREA UNDER THE ROC CURVE IN THE EVALUATION OF MACHINE LEARNING ALGORITHMS
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THE USE OF THE AREA UNDER THE ROC CURVE IN THE EVALUATION OF MACHINE LEARNING ALGORITHMS

机译:ROC曲线下的区域在机器学习算法评估中的使用

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摘要

In this paper we investigate the use of the area under the receiver operating characteristic (ROC) curve (AUC) as a performance measure for machine learning algorithms. As a case study we evaluate six machine learning algorithms (C4.5, Multiscale Classifier, Perceptron, Multi-layer Perceptron, k-Nearest Neighbours, and a Quadratic Discriminant Function) on six ''real world'' medical diagnostics data sets. We compare and discuss the use of AUC to the more conventional overall accuracy and find that AUC exhibits a number of desirable properties when compared to overall accuracy: increased sensitivity in Analysis of Variance (ANOVA) tests; a standard error that decreased as both AUC and the number of test samples increased; decision threshold independent; and it is invariant to a priori class probabilities. The paper concludes with the recommendation that AUC be used in preference to overall accuracy for ''single number'' evaluation of machine learning algorithms. (C) 1997 Pattern Recognition Society. [References: 36]
机译:在本文中,我们研究了使用接收器工作特征(ROC)曲线(AUC)下的面积作为机器学习算法的性能指标。作为案例研究,我们在六个“现实世界”医学诊断数据集上评估了六个机器学习算法(C4.5,多尺度分类器,感知器,多层感知器,k最近邻和二次判别函数)。我们比较并讨论了AUC与更常规的整体精度的使用,发现与整体精度相比,AUC具有许多理想的性能:方差分析(ANOVA)测试中的灵敏度提高;标准误差随着AUC和测试样品数量的增加而降低;决策阈值独立;它与先验类概率无关。本文最后提出建议,在对机器学习算法进行“单数”评估时,应优先使用AUC而不是整体精度。 (C)1997模式识别学会。 [参考:36]

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