AI RESEARCH
Implicit bias produces neural scaling laws in learning curves, from perceptrons to deep networks
arXiv CS.LG
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ArXi:2505.13230v3 Announce Type: replace Scaling laws in deep learning -- empirical power-law relationships linking model performance to resource growth -- have emerged as simple yet striking regularities across architectures, datasets, and tasks. These laws are particularly impactful in guiding the design of state-of-the-art models, since they quantify the benefits of increasing data or model size, and hint at the foundations of interpretability in machine learning. However, most studies focus on asymptotic behavior at the end of