LGCVMay 19, 2021

Comparing Kullback-Leibler Divergence and Mean Squared Error Loss in Knowledge Distillation

arXiv:2105.08919v1331 citationsHas Code
Originality Incremental advance
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This work addresses the problem of designing efficient neural architectures for practitioners by providing insights into loss functions in knowledge distillation, though it is incremental in nature.

The paper investigates knowledge distillation (KD) by comparing Kullback-Leibler divergence and mean squared error loss, showing that MSE loss outperforms KL divergence in transferring logit information and that KD with small tau mitigates label noise.

Knowledge distillation (KD), transferring knowledge from a cumbersome teacher model to a lightweight student model, has been investigated to design efficient neural architectures. Generally, the objective function of KD is the Kullback-Leibler (KL) divergence loss between the softened probability distributions of the teacher model and the student model with the temperature scaling hyperparameter tau. Despite its widespread use, few studies have discussed the influence of such softening on generalization. Here, we theoretically show that the KL divergence loss focuses on the logit matching when tau increases and the label matching when tau goes to 0 and empirically show that the logit matching is positively correlated to performance improvement in general. From this observation, we consider an intuitive KD loss function, the mean squared error (MSE) between the logit vectors, so that the student model can directly learn the logit of the teacher model. The MSE loss outperforms the KL divergence loss, explained by the difference in the penultimate layer representations between the two losses. Furthermore, we show that sequential distillation can improve performance and that KD, particularly when using the KL divergence loss with small tau, mitigates the label noise. The code to reproduce the experiments is publicly available online at https://github.com/jhoon-oh/kd_data/.

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