A Random Matrix Theory method identifies growing Correlation Traps in neural network weight spectra during an 'anti-grokking' overfitting phase, and applies the same diagnostic to some foundation LLMs.
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Quantentheorie des einatomigen idealen Gases.Sitzungsberichte der Preussis- chen Akademie der Wissenschaften, pages 3–14
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UNVERDICTEDtop verdict bucket · 1 papers
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Detecting overfitting in Neural Networks during long-horizon grokking using Random Matrix Theory
A Random Matrix Theory method identifies growing Correlation Traps in neural network weight spectra during an 'anti-grokking' overfitting phase, and applies the same diagnostic to some foundation LLMs.