AI RESEARCH
Model Merging Scaling Laws in Large Language Models
arXiv CS.AI
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ArXi:2509.24244v4 Announce Type: replace We study empirical scaling laws for language model merging measured by cross-entropy. Despite its wide practical use, merging lacks a quantitative rule that predicts returns as we add experts or scale the model size. We identify a compact power law that links model size and expert number: the size-dependent floor decreases with model capacity, while the merging tail exhibits clear diminishing returns in the number of experts.