From Debate to Deliberation: Structured Collective Reasoning with Typed Epistemic Acts
arXiv cs.AI / 3/13/2026
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Key Points
- The paper introduces Deliberative Collective Intelligence (DCI) for multi-agent LLMs, a phased deliberation approach with typed epistemic acts, a shared workspace, and a convergent flow algorithm that guarantees termination and outputs a structured decision packet containing the selected option, residual objections, minority report, and reopen conditions.
- DCI defines four reasoning archetypes and 14 typed epistemic acts, enabling differentiated participants to exchange reasoning, preserve disagreements, and produce accountable artifacts.
- In experiments across 45 tasks and seven domains using Gemini 2.5 Flash, DCI significantly improves non-routine tasks over unstructured debate (+0.95, 95% CI [+0.41, +1.54]) and excels on hidden-profile tasks (9.56, highest of any system on any domain), while underperforming on routine decisions.
- DCI yields 100% structured decision packets and 98% minority reports, but incurs ~62x single-agent token cost, with single-agent generation still outperforming DCI on overall quality.
- The study concludes that deliberative structure, not merely more agents, benefits consequential decisions when process accountability justifies the cost.
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