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Decoupling Dynamical Richness from Representation Learning: Towards Practical Measurement
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Decoupling Dynamical Richness from Representation Learning: Towards Practical Measurement

5 October 2024
Yoonsoo Nam
Nayara Fonseca
Seok Hyeong Lee
Chris Mingard
Niclas Goring
Ouns El Harzli
Abdurrahman Hadi Erturk
Soufiane Hayou
A. Louis
ArXiv (abs)PDFHTMLGithub

Papers citing "Decoupling Dynamical Richness from Representation Learning: Towards Practical Measurement"

1 / 1 papers shown
Position: Solve Layerwise Linear Models First to Understand Neural Dynamical Phenomena (Neural Collapse, Emergence, Lazy/Rich Regime, and Grokking)
Position: Solve Layerwise Linear Models First to Understand Neural Dynamical Phenomena (Neural Collapse, Emergence, Lazy/Rich Regime, and Grokking)
Yoonsoo Nam
Seok Hyeong Lee
Clementine Domine
Yea Chan Park
Charles London
Wonyl Choi
Niclas Goring
Seungjai Lee
AI4CE
632
5
0
28 Feb 2025
1
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