Inverse Depth Scaling From Most Layers Being Similar 文章

ArXiv CS.AI2026-06-02NEWSen作者: Yizhou Liu, Sara Kangaslahti, Ziming Liu, Jeff Gore

摘要

arXiv:2602.05970v2 Announce Type: replace-cross Abstract: Neural scaling laws relate loss to model size in large language models (LLMs), yet depth and width may contribute to performance differently, requiring more detailed studies. Here, we quantify how depth affects loss via analysis of LLMs and toy residual networks. We find loss scales inversely proportional to depth in LLMs, probably due to functionally similar layers reducing error through ensemble averaging rather than compositional learning or discretizing smooth dynamics. This regime is inefficient yet robust and may arise from the architectural bias of residual networks and target functions incompatible with smooth dynamics. The findings suggest that improving LLM efficiency may require architectural innovations to encourage compositional use of depth.

相关事件查看全部 (1)

Inverse Depth Scaling From Most Layers Being Similar
2026-06-02PRODUCT_LAUNCH影响: MEDIUM

相关公司

暂无数据

相关人物

暂无数据