健全的技术监管

Andrew Koh, Sivakorn Sanguanmoo
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引用次数: 0

摘要

我们分析了如何对不确定的技术进行稳健监管。代理人开发一种新技术,在私下了解其危害和益处的同时,不断选择是否继续开发。委托人对代理人可能了解到的情况并不确定,他会在动态机制(如税收或补贴路径)中做出选择,以影响代理人在漠视状态下的选择。我们的研究表明,学习稳健机制--即在所有学习过程中都能提供最高回报保证的机制--非常简单,类似于 "监管沙盒",包括对研发征收零边际税,使代理人对新信息保持最大程度的敏感,直到一个硬性配额,代理人对该配额变成最大程度的不敏感。鲁棒性非常重要:我们描述了非鲁棒性机制下最坏情况下的学习过程,并表明这些机制会诱发不断增长但微弱的乐观情绪,从而导致本金报酬无限制地减少;硬配额则可以防止这种情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Technology Regulation
We analyze how uncertain technologies should be robustly regulated. An agent develops a new technology and, while privately learning about its harms and benefits, continually chooses whether to continue development. A principal, uncertain about what the agent might learn, chooses among dynamic mechanisms (e.g., paths of taxes or subsidies) to influence the agent's choices in different states. We show that learning robust mechanisms -- those which deliver the highest payoff guarantee across all learning processes -- are simple and resemble `regulatory sandboxes' consisting of zero marginal tax on R&D which keeps the agent maximally sensitive to new information up to a hard quota, upon which the agent turns maximally insensitive. Robustness is important: we characterize the worst-case learning process under non-robust mechanisms and show that they induce growing but weak optimism which can deliver unboundedly poor principal payoffs; hard quotas safeguard against this. If the regulator also learns, adaptive hard quotas are robustly optimal which highlights the importance of expertise in regulation.
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