ArXiv TLDR

Post-AGI Economies: Autonomy and the First Fundamental Theorem of Welfare Economics

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2604.21216

Elija Perrier

econ.THcs.AIcs.GT

TLDR

This paper re-evaluates the First Fundamental Theorem of Welfare Economics for post-AGI economies, considering varying degrees of AI autonomy.

Key contributions

  • Challenges the FFTWE's binary autonomy assumption in post-AGI economies.
  • Proposes an "autonomy qualification" for the theorem, accounting for varying AI autonomy.
  • Develops a general-equilibrium model for autonomy-conditioned welfare.
  • Establishes conditions for autonomy-Pareto efficient competitive equilibrium.

Why it matters

This paper is crucial for understanding how advanced AI, with its varying degrees of autonomy, will reshape fundamental economic theories. It provides a necessary framework to adapt welfare economics for post-AGI societies, informing future policy and system design.

Original Abstract

The First Fundamental Theorem of Welfare Economics assumes that welfare-bearing agents are autonomous and implicitly relies on a binary distinction between autonomy and instrumentality. Welfare subjects are those who have autonomy and therefore the capacity to choose and enter into utility comparisons, while everything else does not. In post-AGI economies this presupposition becomes nontrivial because artificial systems may exhibit varying degrees of autonomy, functioning as tools, delegates, strategic market actors, manipulators of choice environments, or possible welfare subjects. We argue that the theorem ought to be subject to an autonomy qualification where the impact of these changes in autonomy assumptions is incorporated. Using a minimal general-equilibrium model with autonomy-conditioned welfare, welfare-status assignment, delegation accounting, and verification institutions, we set out conditions for which autonomy-complete competitive equilibrium is autonomy-Pareto efficient. The classical theorem is recovered as the low-autonomy limit.

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