A Theoretical Analysis of Soft-Label vs Hard-Label Training in Neural Networks
This provides theoretical insights for researchers in neural network efficiency and knowledge distillation, though it is incremental as it builds on prior theoretical studies.
The paper tackles the problem of why soft-label training in knowledge distillation requires fewer neurons than hard-label training, showing theoretically that soft-label training needs O(1/(γ²ε)) neurons compared to O((1/γ⁴)·ln(1/ε)) for hard-label training, with experimental validation on neural networks.
Knowledge distillation, where a small student model learns from a pre-trained large teacher model, has achieved substantial empirical success since the seminal work of \citep{hinton2015distilling}. Despite prior theoretical studies exploring the benefits of knowledge distillation, an important question remains unanswered: why does soft-label training from the teacher require significantly fewer neurons than directly training a small neural network with hard labels? To address this, we first present motivating experimental results using simple neural network models on a binary classification problem. These results demonstrate that soft-label training consistently outperforms hard-label training in accuracy, with the performance gap becoming more pronounced as the dataset becomes increasingly difficult to classify. We then substantiate these observations with a theoretical contribution based on two-layer neural network models. Specifically, we show that soft-label training using gradient descent requires only $O\left(\frac{1}{γ^2 ε}\right)$ neurons to achieve a classification loss averaged over epochs smaller than some $ε> 0$, where $γ$ is the separation margin of the limiting kernel. In contrast, hard-label training requires $O\left(\frac{1}{γ^4} \cdot \ln\left(\frac{1}ε\right)\right)$ neurons, as derived from an adapted version of the gradient descent analysis in \citep{ji2020polylogarithmic}. This implies that when $γ\leq ε$, i.e., when the dataset is challenging to classify, the neuron requirement for soft-label training can be significantly lower than that for hard-label training. Finally, we present experimental results on deep neural networks, further validating these theoretical findings.