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[ARTICLE · art-33518] src=arxiv.org ↗ pub= topic=large-language-models verified=true sentiment=· neutral

Hidden Anchors in Multi-Agent LLM Deliberation

Researchers model multi-agent LLM deliberation as a closed-loop dynamical system where each agent has a hidden internal belief, or anchor, that pulls its opinion. They show the anchor can be recovered from deliberation alone and explains why an agent's confidence can exceed initial beliefs. Testing across three open-weight model families reveals a spectrum of anchor influence, with escape from the convex hull of initial opinions occurring only when the anchor sits far from them.

read1 min views2 publishedJun 19, 2026

arXiv:2606.19494v1 Announce Type: new Abstract: Multi-agent LLM deliberation, where agents exchange and revise answers over several rounds, is increasingly used to improve reasoning and accuracy, yet how and why it works is rarely modelled. Such deliberation mirrors how humans reach decisions. As social animals we are pulled both by the group, the herd effect that classical opinion-dynamics models such as DeGroot and Friedkin--Johnsen capture, and by our own internal belief, which they do not. We model multi-agent deliberation as a closed-loop dynamical system in which each agent carries a hidden internal belief, its anchor, that continually pulls its opinion regardless of its neighbours. We show this anchor can be recovered from the deliberation alone, and that it explains a behaviour classical consensus rules forbid: an agent's confidence in the correct answer can climb past where any agent started, escaping the space (convexhull) formed by the initial beliefs. Checking whether the recovered anchor also predicts held-out runs (generalizes) gives a simple test for when a model is truly driven bysuch an anchor. Across three open-weight model families this is a spectrum, not all-or-nothing. All anchors' influence are about equally strongly, but they differ in where the anchor sits, and only when it sits far from the initial opinions does deliberation escape the hull and need the full closed-loop model.

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