The Economics of AI Supply Chain Regulation
Sihan Qian, Amit Mehra, Dengpan Liu

TL;DR
This paper models how different regulatory policies impact consumer surplus and profits in AI supply chains, revealing conditions under which policies are most effective and beneficial for all parties involved.
Contribution
It provides a game-theoretic analysis of policy effects on AI supply chain economics, highlighting when specific policies enhance consumer welfare and profits.
Findings
Pro-price-competitive policies boost consumer surplus with high compute costs.
Pro-quality-competitive policies always improve consumer surplus.
Compute subsidies are effective when compute costs are low.
Abstract
The rise of foundation models has driven the emergence of AI supply chains, where upstream foundation model providers offer fine-tuning and inference services to downstream firms developing domain-specific applications. Downstream firms pay providers to use their computing infrastructure to fine-tune models with proprietary data, creating a co-creation dynamic that enhances model quality. Amid concerns that foundation model providers and downstream firms may capture excessive consumer surplus, along with increasing regulatory measures, this study employs a game-theoretic model involving a provider and two competing downstream firms to analyze how policy interventions affect consumer surplus in the AI supply chain. Our analysis shows that policies promoting price competition in downstream markets (i.e., pro-price-competitive policies) boost consumer surplus only when compute or data…
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Taxonomy
TopicsDigital Platforms and Economics · Auction Theory and Applications · Supply Chain and Inventory Management
