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Masks, Signs, And Learning Rate Rewinding.

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conference contribution
posted on 2024-08-26, 10:49 authored by Advait GadhikarAdvait Gadhikar, Rebekka BurkholzRebekka Burkholz
Learning Rate Rewinding (LRR) has been established as a strong variant of Iterative Magnitude Pruning (IMP) to find lottery tickets in deep overparameterized neural networks. While both iterative pruning schemes couple structure and parameter learning, understanding how LRR excels in both aspects can bring us closer to the design of more flexible deep learning algorithms that can optimize diverse sets of sparse architectures. To this end, we conduct experiments that disentangle the effect of mask learning and parameter optimization and how both benefit from overparameterization. The ability of LRR to flip parameter signs early and stay robust to sign perturbations seems to make it not only more effective in mask identification but also in optimizing diverse sets of masks, including random ones. In support of this hypothesis, we prove in a simplified single hidden neuron setting that LRR succeeds in more cases than IMP, as it can escape initially problematic sign configurations.

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Primary Research Area

  • Trustworthy Information Processing

Name of Conference

International Conference on Learning Representations (ICLR)

Journal

ICLR

Publisher

OpenReview.net

BibTeX

@conference{Gadhikar:Burkholz:2024, title = "Masks, Signs, And Learning Rate Rewinding.", author = "Gadhikar, Advait Harshal" AND "Burkholz, Rebekka", year = 2024, month = 1, journal = "ICLR", publisher = "OpenReview.net" }

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