Estimation of area under the ROC curve in the framework of gamma mixtures

Q4 Mathematics
Arunima S. Kannan, R. V. Vardhan
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引用次数: 0

Abstract

Abstract Receiver operating characteristic (ROC) curve is one of the well-known classification tools. There are several bi-distributional ROC models in the literature, which can be applied only when there is a prior knowledge on the class/status of the subject. If the predefined status of the subject is not known, then we need to administer a statistical methodology to identify the homogeneous components within it. Once this is done, modeling of ROC can be made, and here it is assumed that the data underlie non-normal distribution. In this paper, the need for handling non-normal data in the framework of mixture model is discussed and demonstrated using a real data set and simulation studies. It is shown that, the proposed mixGamma ROC model replaces the existing ROC models when the data is of non-normal and multi-mode.
伽马混合框架下ROC曲线下面积的估计
接收者工作特征曲线(Receiver operating characteristic, ROC)是公认的分类工具之一。文献中有几个双分布ROC模型,只有在对受试者的类别/状态有先验知识时才能应用。如果不知道主题的预定义状态,那么我们需要管理一种统计方法来识别其中的同类组件。一旦完成,就可以进行ROC建模,这里假设数据是非正态分布。本文讨论了在混合模型框架下处理非正态数据的必要性,并通过实际数据集和仿真研究进行了论证。结果表明,当数据是非正态和多模态时,所提出的mixGamma ROC模型可以替代现有的ROC模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.00
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发文量
29
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