From Principles to Rules: A Regulatory Approach for Frontier AI
arxiv(2024)
Abstract
Several jurisdictions are starting to regulate frontier artificial
intelligence (AI) systems, i.e. general-purpose AI systems that match or exceed
the capabilities present in the most advanced systems. To reduce risks from
these systems, regulators may require frontier AI developers to adopt safety
measures. The requirements could be formulated as high-level principles (e.g.
'AI systems should be safe and secure') or specific rules (e.g. 'AI systems
must be evaluated for dangerous model capabilities following the protocol set
forth in...'). These regulatory approaches, known as 'principle-based' and
'rule-based' regulation, have complementary strengths and weaknesses. While
specific rules provide more certainty and are easier to enforce, they can
quickly become outdated and lead to box-ticking. Conversely, while high-level
principles provide less certainty and are more costly to enforce, they are more
adaptable and more appropriate in situations where the regulator is unsure
exactly what behavior would best advance a given regulatory objective. However,
rule-based and principle-based regulation are not binary options. Policymakers
must choose a point on the spectrum between them, recognizing that the right
level of specificity may vary between requirements and change over time. We
recommend that policymakers should initially (1) mandate adherence to
high-level principles for safe frontier AI development and deployment, (2)
ensure that regulators closely oversee how developers comply with these
principles, and (3) urgently build up regulatory capacity. Over time, the
approach should likely become more rule-based. Our recommendations are based on
a number of assumptions, including (A) risks from frontier AI systems are
poorly understood and rapidly evolving, (B) many safety practices are still
nascent, and (C) frontier AI developers are best placed to innovate on safety
practices.
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