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Enhancing Cross Entropy with a Linearly Adaptive Loss Function for Optimized Classification Performance
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提出一种基于信息理论的线性自适应交叉熵损失函数,在CIFAR-100数据集上测试显示,该函数在分类准确率上优于标准交叉熵损失函数,同时保持效率。

arXiv:2507.10574v1 Announce Type: cross Abstract: We propose the Linearly Adaptive Cross Entropy Loss function. This is a novel measure derived from the information theory. In comparison to the standard cross entropy loss function, the proposed one has an additional term that depends on the predicted probability of the true class. This feature serves to enhance the optimization process in classification tasks involving one-hot encoded class labels. The proposed one has been evaluated on a ResNet-based model using the CIFAR-100 dataset. Preliminary results show that the proposed one consistently outperforms the standard cross entropy loss function in terms of classification accuracy. Moreover, the proposed one maintains simplicity, achieving practically the same efficiency to the traditional cross entropy loss. These findings suggest that our approach could broaden the scope for future research into loss function design.

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线性自适应交叉熵损失函数 信息理论 分类准确率
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