CYAILGNov 21, 2023

Moderating Model Marketplaces: Platform Governance Puzzles for AI Intermediaries

arXiv:2311.12573v322 citationsh-index: 13
Originality Synthesis-oriented
AI Analysis

It addresses the problem of platform governance for AI intermediaries, which is crucial for developers and policymakers, but is incremental as it builds on existing analysis and practices.

The paper examines the governance challenges faced by AI model marketplaces like Hugging Face, GitHub, and Civitai in moderating user-uploaded models that can be used for harmful or illegal purposes, and outlines industry practices such as licensing and automated moderation to address these issues.

The AI development community is increasingly making use of hosting intermediaries such as Hugging Face provide easy access to user-uploaded models and training data. These model marketplaces lower technical deployment barriers for hundreds of thousands of users, yet can be used in numerous potentially harmful and illegal ways. In this article, we explain ways in which AI systems, which can both `contain' content and be open-ended tools, present one of the trickiest platform governance challenges seen to date. We provide case studies of several incidents across three illustrative platforms -- Hugging Face, GitHub and Civitai -- to examine how model marketplaces moderate models. Building on this analysis, we outline important (and yet nevertheless limited) practices that industry has been developing to respond to moderation demands: licensing, access and use restrictions, automated content moderation, and open policy development. While the policy challenge at hand is a considerable one, we conclude with some ideas as to how platforms could better mobilize resources to act as a careful, fair, and proportionate regulatory access point.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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