QOC DAO -- Stepwise Development Towards an AI Driven Decentralized Autonomous Organization
By: Marc Jansen, Christophe Verdot
Potential Business Impact:
Lets online groups make fairer, smarter choices.
This paper introduces a structured approach to improving decision making in Decentralized Autonomous Organizations (DAO) through the integration of the Question-Option-Criteria (QOC) model and AI agents. We outline a stepwise governance framework that evolves from human led evaluations to fully autonomous, AI-driven processes. By decomposing decisions into weighted, criterion based evaluations, the QOC model enhances transparency, fairness, and explainability in DAO voting. We demonstrate how large language models (LLMs) and stakeholder aligned AI agents can support or automate evaluations, while statistical safeguards help detect manipulation. The proposed framework lays the foundation for scalable and trustworthy governance in the Web3 ecosystem.
Similar Papers
Slaying the Dragon: The Quest for Democracy in Decentralized Autonomous Organizations (DAOs)
Computers and Society
Lets groups of people make decisions together online.
Verifiable Off-Chain Governance
CS and Game Theory
Lets online groups make smarter, faster decisions.
DAO-AI: Evaluating Collective Decision-Making through Agentic AI in Decentralized Governance
Artificial Intelligence
AI votes on money rules like people.