Deciding how to respond: A deliberative framework to guide policymaker responses to AI systems
- URL: http://arxiv.org/abs/2508.03666v3
- Date: Thu, 18 Sep 2025 14:30:53 GMT
- Title: Deciding how to respond: A deliberative framework to guide policymaker responses to AI systems
- Authors: Willem Fourie,
- Abstract summary: We argue that by operationalising the concept of freedom, a complementary approach can be developed.<n>The resulting framework is structured around coordinative, communicative and decision spaces.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The discourse on responsible artificial intelligence (AI) regulation is understandably dominated by risk-focused assessments and analyses. This approach reflects the fundamental uncertainty policymakers face when determining appropriate responses to current, emerging and novel AI systems. In this article, we argue that by operationalising the concept of freedom - the philosophical counterpart to responsibility - a complementary approach centred on the potential societal benefits of AI systems can be developed. The result is a discursive framework grounded in freedom as capability and freedom as opportunity, which represent the two main intellectual traditions of interpreting freedom. We contend that the complexity, ambiguity and contestation involved in regulating AI systems make a deliberative paradigm more useful than the conventional technical one. The resulting framework is structured around coordinative, communicative and decision spaces, each with sequential focal points and associated outputs.
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