Activities per year
Abstract
In this paper, we conjecture that if the permutation invariance of neural networks is taken into account, SGD solutions will likely have no barrier in the linear interpolation between them. Although it is a bold conjecture, we show how extensive empirical attempts fall short of refuting it. We further provide a preliminary theoretical result to support our conjecture. Our conjecture has implications for lottery ticket hypothesis, distributed training, and ensemble methods.
Original language | English |
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Publisher | arXiv |
Number of pages | 24 |
Publication status | Published - 12 Oct 2021 |
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Dive into the research topics of 'The Role of Permutation Invariance in Linear Mode Connectivity of Neural Networks'. Together they form a unique fingerprint.Activities
- 1 Invited talk
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Navigating the Depths of Adaptive Embedded Intelligence: Ensembling, Reconfiguring and Editing Models
Saukh, O. (Speaker)
14 Dec 2023Activity: Talk or presentation › Invited talk › Science to science
Research output
- 1 Poster
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The Role of Permutation Invariance in Linear Mode Connectivity of Neural Networks
Entezari, R., Sedghi, H., Saukh, O. & Neyshabur, B., 7 Jul 2021.Research output: Contribution to conference › Poster › peer-review