AISep 29, 2025

Model Merging Scaling Laws in Large Language Models

arXiv:2509.24244v36 citationsh-index: 10
Originality Incremental advance
AI Analysis

This provides a quantitative framework for efficiently scaling distributed generative AI systems, though it is incremental as it builds on existing merging practices.

The authors identified a power law that predicts cross-entropy improvements from merging language models as a function of model size and number of experts, showing diminishing returns and enabling predictive planning for resource allocation.

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. The law holds in-domain and cross-domain, tightly fits measured curves across diverse architectures and methods (Average, TA, TIES, DARE), and explains two robust regularities: most gains arrive early, and variability shrinks as more experts are included. Building on this, we present a simple theory that explains why gains fall roughly as 1/k and links the floor and tail to properties of the base model and the diversity across domains. This law enables predictive planning: estimate how many experts are needed to reach a target loss, decide when to stop adding experts, and trade off scaling the base model versus adding experts under a fixed budget--turning merging from heuristic practice into a computationally efficient, planable alternative to multitask training. This suggests a scaling principle for distributed generative AI: predictable gains can be achieved by composing specialists, offering a complementary path toward AGI-level systems.

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