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Shannon information and receiver operating characteristic analysis for multiclass classification in imaging

机译:成像中多类分类的Shannon信息和接收器工作特性分析

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We show how Shannon information is mathematically related to receiver operating characteristic (ROC) analysis for multiclass classification problems in imaging. In particular, the minimum probability of error for the ideal observer, as a function of the prior probabilities for each class, determines the Shannon Information for the classification task, also considered as a function of the prior probabilities on the classes. In the process, we show how an ROC hypersurface that has been studied by other researchers is mathematically related to a Shannon information ROC (SIROC) hypersurface. In fact, the ROC hypersurface completely determines the SIROC hypersurface via a non-local integral transform on the ROC hypersurface. We also show that both hypersurfaces are convex and satisfy other geometrical relationships via the Legendre transform. (C) 2016 Optical Society of America
机译:我们将显示Shannon信息在数学上如何与成像中的多类分类问题的接收器工作特性(ROC)分析相关。尤其是,理想观察者的最小错误概率(取决于每个类别的先验概率)确定了分类任务的香农信息,香农信息也被视为类别上的先验概率的函数。在此过程中,我们显示了其他研究人员研究过的ROC超曲面在数学上与Shannon信息ROC(SIROC)超曲面之间的关系。实际上,ROC超曲面通过ROC超曲面上的非局部积分变换来完全确定SIROC超曲面。我们还展示了两个超曲面都是凸的,并且通过Legendre变换满足其他几何关系。 (C)2016美国眼镜学会

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