LGMLFeb 13, 2020

Self-Distillation Amplifies Regularization in Hilbert Space

arXiv:2002.05715v3278 citations
AI Analysis

This addresses a fundamental problem in deep learning for researchers by explaining an empirical phenomenon, though it is incremental as it builds on existing self-distillation concepts.

The paper tackles the mystery of why self-distillation improves model accuracy by providing the first theoretical analysis, showing that self-distillation iterations modify regularization by limiting basis functions, which can reduce over-fitting initially but lead to under-fitting later.

Knowledge distillation introduced in the deep learning context is a method to transfer knowledge from one architecture to another. In particular, when the architectures are identical, this is called self-distillation. The idea is to feed in predictions of the trained model as new target values for retraining (and iterate this loop possibly a few times). It has been empirically observed that the self-distilled model often achieves higher accuracy on held out data. Why this happens, however, has been a mystery: the self-distillation dynamics does not receive any new information about the task and solely evolves by looping over training. To the best of our knowledge, there is no rigorous understanding of this phenomenon. This work provides the first theoretical analysis of self-distillation. We focus on fitting a nonlinear function to training data, where the model space is Hilbert space and fitting is subject to $\ell_2$ regularization in this function space. We show that self-distillation iterations modify regularization by progressively limiting the number of basis functions that can be used to represent the solution. This implies (as we also verify empirically) that while a few rounds of self-distillation may reduce over-fitting, further rounds may lead to under-fitting and thus worse performance.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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