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The three-class ideal observer for univariate normal data: Decision variable and ROC surface properties

机译:单变量正常数据的三类理想观察者:决策变量和ROC曲面属性

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摘要

Although a fully general extension of ROC analysis to classification tasks with more than two classes has yet to be developed, the potential benefits to be gained from a practical performance evaluation methodology for classification tasks with three classes have motivated a number of research groups to propose methods based on constrained or simplified observer or data models. Here we consider an ideal observer in a task with underlying data drawn from three univariate normal distributions. We investigate the behavior of the resulting ideal observer’s decision variables and ROC surface. In particular, we show that the pair of ideal observer decision variables is constrained to a parametric curve in two-dimensional likelihood ratio space, and that the decision boundary line segments used by the ideal observer can intersect this curve in at most six places. From this, we further show that the resulting ROC surface has at most four degrees of freedom at any point, and not the five that would be required, in general, for a surface in a six-dimensional space to be non-degenerate. In light of the difficulties we have previously pointed out in generalizing the well-known area under the ROC curve performance metric to tasks with three or more classes, the problem of developing a suitable and fully general performance metric for classification tasks with three or more classes remains unsolved.
机译:虽然尚未开发出具有两个以上课程的分类任务的完全延长,但尚未开发出来的分类任务,从实际的性能评估方法中获得的潜在好处是有三个课程的分类任务的潜在好处具有许多研究组来提出方法基于受约束或简化的观察者或数据模型。在这里,我们将一个理想的观察者中的一个理想的观察者,其中包含三个单变量正常分布的底层数据。我们调查所产生的理想观察者决策变量和ROC表面的行为。特别地,我们表明,这对理想的观察者判定变量被限制为二维似然比空间中的参数曲线,并且理想观察者使用的决策边界线段可以在最多六个地方与该曲线相交。由此,我们进一步表明,所得的Roc表面在任何时候都具有至多四个自由度,而不是通常需要的五个,通常用于六维空间中的表面是非退化的。鉴于我们之前指出的困难在Roc Curve性能指标下概括了具有三个或更多个类的任务的任务,开发具有三个或更多类的分类任务的合适和完全一般性的性能度量的问题仍未解决。

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