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拟合ROC曲线时所使用的“双正态”假设的稳健性。

The robustness of the "binormal" assumptions used in fitting ROC curves.

作者信息

Hanley J A

机构信息

Department of Epidemiology and Biostatistics, McGill University, Montréal, PQ, Canada.

出版信息

Med Decis Making. 1988 Jul-Sep;8(3):197-203. doi: 10.1177/0272989X8800800308.

Abstract

The binormal form is the most common model used to formally fit ROC curves to the data from signal detection studies that employ the "rating" method. The author lists a number of justifications that have been offered for this choice, ranging from theoretical considerations of probability laws and signal detection theory, to mathematical tractability and convenience, to empirical results showing that "it fits!" To these justifications is added another, namely that even if an alternative formulation based on another underlying form (e.g., power law) or model (e.g., binomial, Poisson, or gamma type distributions) were in fact correct, the binormal fit differs so little from the true form as to be of no practical consequence. Moreover, the small lack of fit is unlikely to be demonstrated in practice: it is obscured by the much larger variation that can be attributed to sampling of cases. In addition, even if a very large sample of cases could be studied, the small number of rating categories used does not permit seemingly very different models to be distinguished from one another.

摘要

双正态形式是用于将ROC曲线正式拟合到采用“评分”方法的信号检测研究数据的最常用模型。作者列出了为这一选择提供的许多理由,从概率定律和信号检测理论的理论考虑,到数学上的易处理性和便利性,再到表明“它适用!”的实证结果。除此之外,还有另一个理由,即即使基于另一种潜在形式(如幂律)或模型(如二项式、泊松或伽马型分布)的替代公式实际上是正确的,双正态拟合与真实形式的差异也非常小,以至于没有实际影响。此外,实际中不太可能证明拟合不足:它被可归因于病例抽样的大得多的变异性所掩盖。此外,即使可以研究非常大的病例样本,所使用的评分类别数量很少也不允许区分看似非常不同的模型。

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