首页> 外国专利> ROBUST DEEP AUC/AUPRC MAXIMIZATION: A NEW SURROGATE LOSS AND EMPIRICAL STUDIES ON MEDICAL IMAGE CLASSIFICATION

ROBUST DEEP AUC/AUPRC MAXIMIZATION: A NEW SURROGATE LOSS AND EMPIRICAL STUDIES ON MEDICAL IMAGE CLASSIFICATION

机译:稳健的深度AUC/AUPRC最大化:一种新的替代损失和医学图像分类的实证研究

摘要

A computer-based automated method of performing classification includes learning a deep neural network by maximizing an area under a receiver operating characteristic curve (AUC) or precision-recall curve (AUPRC) score wherein a margin-based surrogate loss function is applied, receiving an input into a deep neural network, and processing the input to the deep neural network to generate a prediction, wherein the prediction comprises a classification of the input. The computer-based automated method may be performed by executing instructions in at least one processor, and wherein said instructions are stored on a non-transitory memory readable by the at least one processor.
机译:一种基于计算机的自动分类方法,包括通过最大化接收器工作特性曲线(AUC)或精度召回曲线(AUPRC)分数下的面积来学习深度神经网络,其中应用了基于边缘的替代损失函数,接收到深度神经网络的输入,以及处理深度神经网络的输入以生成预测,其中预测包括输入的分类。基于计算机的自动化方法可以通过在至少一个处理器中执行指令来执行,其中所述指令存储在至少一个处理器可读的非瞬态存储器上。

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