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How Width and Data Shape Generalization Scaling Laws in Quadratic Neural Networks

Medium Severity Global
Date Occurred Jun 26, 2026 16:27 UTC
Event Type AI Research
Source arXiv
Recorded Jun 29, 2026
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arXiv: How Width and Data Shape Generalization Scaling Laws in Quadratic Neural Networks Understanding how performance scales jointly with model size and data is a central problem in modern machine learning. Existing theoretical works on scaling laws typically describe generalization as a function of data or compute, often in fixed-feature or infinite-width regimes and for online SGD. Here, we instead study how generalization scales with the number of trainable parameters and the number of samples in a feature-learning model. We analyze $\ell_2$-regularized empirical test error mini

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Event Metadata
  • ID #12004
  • Type AI Research
  • Region Global
  • Severity Medium
  • Indexed Jun 29, 2026