How AI Models are Optimized Through Web3 Governance

54 Pages Posted: 8 Jul 2024

See all articles by Wulf A. Kaal

Wulf A. Kaal

University of St. Thomas - School of Law (Minnesota)

Date Written: June 05, 2024

Abstract

The integration of web3 community governance, using Weighted Directed Acyclic Graphs (WDAGs) and validation pools with reputation staking in combination with a federated communications protocol, offers an evolutionary approach to AI model optimization. This proposed framework supports decentralized, dynamic, evolutionary, and participatory AI governance, crucial for handling the complex ethical and operational demands of various AI technologies. Specifically, Deep Learning models gain from decentralized data handling that mitigates bias and enhances privacy through community-validated updates. Federated Learning benefits from enhanced security and privacy through blockchain's transparency and immutability, with smart contracts automating model validation and updates. Transformer AI models benefit from continuous adaptation to new data facilitated by real-time updates, ensuring relevance and compliance with evolving linguistic and cultural norms. Graph Neural Networks (GNNs) utilize decentralized data to improve relational data processing, which is crucial for tasks like social network analysis and fraud detection. Reinforcement Learning (RL) models thrive in the varied scenarios presented by a decentralized framework, enhancing decision-making in complex environments. Lastly, Reinforcement Learning from Human Feedback (RLHF) models benefit from the broad and transparent integration of human feedback, aligning AI behavior with real-time and evolving human values and ethical standards. Collectively, these mechanisms ensure AI models are not only technically proficient but also ethically aligned and socially responsible, fostering trust and broad acceptance of AI applications. The proposed web3-driven AI governance model paves the way for AI systems that are adaptable, ethical, and efficiently managed, meeting the rapid evolution of technology and societal expectations.

Keywords: Artificial Intelligence, AI Models, Web3, Distributed Machine Learning, Graph Neural Networks, Reinforcement Learning, Deep Learning Models, Transformer AI, Reinforcement Learning from Human Feedback, Reputation Systems, Governance, Decentralized Autonomous Organization, Smart Contracts, Token Models, Cryptocurrencies, Feedback Effects, Emerging Technology, Tokens

JEL Classification: K20, K23, K32, L43, L5, O31, O32

Suggested Citation

Kaal, Wulf A., How AI Models are Optimized Through Web3 Governance (June 05, 2024). U of St. Thomas (Minnesota) Legal Studies Research Paper No. 24-14, Available at SSRN: https://ssrn.com/abstract=4855607 or http://dx.doi.org/10.2139/ssrn.4855607

Wulf A. Kaal (Contact Author)

University of St. Thomas - School of Law (Minnesota) ( email )

MSL 400, 1000 La Salle Avenue
Minneapolis, MN Minnesota 55403-2005
United States

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