cs.AI updates on arXiv.org 07月15日 12:24
Bounding the Worst-class Error: A Boosting Approach
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本文针对最差类别错误率问题,提出了一种基于深度神经网络的优化方法,通过约束最差类别错误率而非零误差,避免过拟合,并通过集成方法提高准确率。

arXiv:2310.14890v2 Announce Type: replace-cross Abstract: This paper tackles the problem of the worst-class error rate, instead of the standard error rate averaged over all classes. For example, a three-class classification task with class-wise error rates of 10%, 10%, and 40% has a worst-class error rate of 40%, whereas the average is 20% under the class-balanced condition. The worst-class error is important in many applications. For example, in a medical image classification task, it would not be acceptable for the malignant tumor class to have a 40% error rate, while the benign and healthy classes have a 10% error rates. To avoid overfitting in worst-class error minimization using Deep Neural Networks (DNNs), we design a problem formulation for bounding the worst-class error instead of achieving zero worst-class error. Moreover, to correctly bound the worst-class error, we propose a boosting approach which ensembles DNNs. We give training and generalization worst-class-error bound. Experimental results show that the algorithm lowers worst-class test error rates while avoiding overfitting to the training set.

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最差类别错误率 深度神经网络 过拟合 集成方法
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