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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
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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
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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.
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