CHAL: Council of Hierarchical Agentic Language
Tommaso Giovannelli, Griffin D. Kent

TL;DR
CHAL introduces a multi-agent dialectic framework that uses structured belief representations and value systems to optimize beliefs in defeasible domains, enhancing transparency and interpretability in AI reasoning.
Contribution
It is the first framework to treat multi-agent debate as structured belief optimization over defeasible domains, incorporating a Bayesian-inspired belief schema and configurable value systems.
Findings
Adjudicator's value system influences debate trajectories.
Council diversity improves belief refinement.
Framework generalizes across broad fields.
Abstract
Multi-agent debate has emerged as a promising approach for improving LLM reasoning on ground-truth tasks, yet current methodologies face certain structural limitations: debate tends to induce a martingale over belief trajectories, majority voting accounts for most observed gains, and LLMs exhibit confidence escalation rather than calibration across rounds. We argue that the genuine value of debate, and dialectic systems as a whole, lies not in ground-truth tasks but in defeasible domains, where every position can in principle be defeated by better reasoning. We present the Council of Hierarchical Agentic Language (CHAL), a multi-agent dialectic framework that treats defeasible argumentation as an engine for belief optimization. Each agent maintains a CHAL Belief Schema (CBS), a graph-structured belief representation with a Bayesian-inspired architecture, that facilitates belief revision…
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