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Grassmannian Low-Rank Representation for Efficient Training of Deep Neural Networks

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Abstract

Model efficiency is a critical factor in the design of over-parametrized neural networks, particularly in terms of memory usage and computational complexity. In this work, we introduce a novel Grassmannian low-rank approximation of neural networks achieved through manifold optimization. This approach not only reduces the number of parameters required, similar to other structured sparse training techniques, but also delivers enhanced performance compared to conventional methods using a new parameter representation. The inherent implicit regularization induced by the low-rank constraint contributes to a lower generalization gap, thereby ensuring high performance and improved robustness.
Original languageEnglish
Publication statusPublished - 22 May 2025
EventNetherlands Conference on Computer Vision, NCCV 2025 - Utrecht, Netherlands
Duration: 22 May 202523 May 2025
https://thenccv.github.io/2025/

Conference

ConferenceNetherlands Conference on Computer Vision, NCCV 2025
Abbreviated titleNCCV 2025
Country/TerritoryNetherlands
CityUtrecht
Period22/05/2523/05/25
Internet address

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