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Main Authors: Kong, Weiyi, Lai, Shiyang, Piao, Jinghua, Evans, James
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.17193
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author Kong, Weiyi
Lai, Shiyang
Piao, Jinghua
Evans, James
author_facet Kong, Weiyi
Lai, Shiyang
Piao, Jinghua
Evans, James
contents Whether machines can originate novel content has been debated for nearly two centuries, from Lovelace's assertion that no engine can "originate anything" to Turing's question of whether a machine can amplify ideas brought in from outside. Multi-large language model (LLM) systems, increasingly deployed for autonomous generation, reopen this question empirically. Here we show that such systems, operating in closed loops, exhibit semantic collapse: systematic convergence in semantic representations despite apparent lexical variation. Across model families, extended simulations of 200 to 1,000 rounds, the pattern remains consistent. Twelve intervention strategies, spanning decoding parameters, prompt design, agent composition, activation engineering, and reinforcement learning, fail to restore semantic diversity. Mechanistic analyses suggest that semantic collapse is not explained by alignment or conformity biases, but is consistent with intrinsic properties of autoregressive generation. Our results point to fundamental constraints in the ability of multi-LLM systems to sustain open-ended knowledge production in closed-loop settings.
format Preprint
id arxiv_https___arxiv_org_abs_2605_17193
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Multi-LLM Systems Exhibit Robust Semantic Collapse
Kong, Weiyi
Lai, Shiyang
Piao, Jinghua
Evans, James
Multiagent Systems
Whether machines can originate novel content has been debated for nearly two centuries, from Lovelace's assertion that no engine can "originate anything" to Turing's question of whether a machine can amplify ideas brought in from outside. Multi-large language model (LLM) systems, increasingly deployed for autonomous generation, reopen this question empirically. Here we show that such systems, operating in closed loops, exhibit semantic collapse: systematic convergence in semantic representations despite apparent lexical variation. Across model families, extended simulations of 200 to 1,000 rounds, the pattern remains consistent. Twelve intervention strategies, spanning decoding parameters, prompt design, agent composition, activation engineering, and reinforcement learning, fail to restore semantic diversity. Mechanistic analyses suggest that semantic collapse is not explained by alignment or conformity biases, but is consistent with intrinsic properties of autoregressive generation. Our results point to fundamental constraints in the ability of multi-LLM systems to sustain open-ended knowledge production in closed-loop settings.
title Multi-LLM Systems Exhibit Robust Semantic Collapse
topic Multiagent Systems
url https://arxiv.org/abs/2605.17193