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Negative Log Likelihood Ratio Loss for Deep Neural Network Classification

机译:深度神经网络分类的负面日志似然比损失

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In deep neural network, the cross-entropy loss function is commonly used for classification. Minimizing cross-entropy is equivalent to maximizing likelihood under assumptions of uniform feature and class distributions. It belongs to generative training criteria which does not directly discriminate correct class from competing classes. We propose a discriminative loss function with negative log likelihood ratio between correct and competing classes. It significantly outperforms the cross-entropy loss on the CIFAR-10 image classification task.
机译:在深度神经网络中,跨熵损失函数通常用于分类。最小化交叉熵相当于最大化在均匀特征和类分布的假设下的可能性。它属于生成培训标准,不会直接区分正确的竞争类别。我们提出了具有正确和竞争类别之间的负对数似然比的歧视性损失函数。它显着优于CIFAR-10图像分类任务的跨熵损失。

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