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Main Authors: Tang, Ling, Mei, Jilin, Chen, Qian, Ren, Qihan, Zhang, Linfeng, Zhang, Quanshi, Shao, Jing, Hu, Xia, Liu, Dongrui
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.11404
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author Tang, Ling
Mei, Jilin
Chen, Qian
Ren, Qihan
Zhang, Linfeng
Zhang, Quanshi
Shao, Jing
Hu, Xia
Liu, Dongrui
author_facet Tang, Ling
Mei, Jilin
Chen, Qian
Ren, Qihan
Zhang, Linfeng
Zhang, Quanshi
Shao, Jing
Hu, Xia
Liu, Dongrui
contents Large language models (LLMs) can simulate human-like reasoning and decision-making in individual agents. LLM-powered multi-agent systems (MAS) combine such agents to simulate population-scale social phenomena such as polarization, information cascades, and market panics. Such studies require attributing macro emergence to individual agents, but existing axiomatic methods scale combinatorially in $N$ and have been confined to $N \lesssim 10^3$, while the phenomena they explain occur at $N \geq 10^6$. We address this gap by adapting Aumann--Shapley path-integral attribution to LLM-powered MAS at million-agent scale; the resulting method satisfies all four axioms, runs four to five orders of magnitude faster than sampled Shapley on the same hardware. We use this method to test the scale gap empirically: across 14 days of public Bluesky data ($1{,}671{,}587$ active users), we compute the attribution at both full scale and the visibility-biased $N = 10^2$ convenience sample used by small-scale studies, and the two disagree structurally. At full scale the long tail and middle tier jointly carry the majority; the biased small panel attributes almost everything to a few high-follower accounts. We then prove that under any nonlinear macro indicator the disagreement cannot be reduced by post-hoc rescaling: an Attribution Scaling Bias theorem shows that no global rescaling factor can reconcile small-scale and full-scale attribution. Full-scale attribution is therefore not a methodological choice but a theoretical requirement for any nonlinear macro indicator.
format Preprint
id arxiv_https___arxiv_org_abs_2605_11404
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Attributing Emergence in Million-Agent Systems
Tang, Ling
Mei, Jilin
Chen, Qian
Ren, Qihan
Zhang, Linfeng
Zhang, Quanshi
Shao, Jing
Hu, Xia
Liu, Dongrui
Artificial Intelligence
Large language models (LLMs) can simulate human-like reasoning and decision-making in individual agents. LLM-powered multi-agent systems (MAS) combine such agents to simulate population-scale social phenomena such as polarization, information cascades, and market panics. Such studies require attributing macro emergence to individual agents, but existing axiomatic methods scale combinatorially in $N$ and have been confined to $N \lesssim 10^3$, while the phenomena they explain occur at $N \geq 10^6$. We address this gap by adapting Aumann--Shapley path-integral attribution to LLM-powered MAS at million-agent scale; the resulting method satisfies all four axioms, runs four to five orders of magnitude faster than sampled Shapley on the same hardware. We use this method to test the scale gap empirically: across 14 days of public Bluesky data ($1{,}671{,}587$ active users), we compute the attribution at both full scale and the visibility-biased $N = 10^2$ convenience sample used by small-scale studies, and the two disagree structurally. At full scale the long tail and middle tier jointly carry the majority; the biased small panel attributes almost everything to a few high-follower accounts. We then prove that under any nonlinear macro indicator the disagreement cannot be reduced by post-hoc rescaling: an Attribution Scaling Bias theorem shows that no global rescaling factor can reconcile small-scale and full-scale attribution. Full-scale attribution is therefore not a methodological choice but a theoretical requirement for any nonlinear macro indicator.
title Attributing Emergence in Million-Agent Systems
topic Artificial Intelligence
url https://arxiv.org/abs/2605.11404