The Institutional Scaling Law: Non-Monotonic Fitness, Capability-Trust Divergence, and Symbiogenetic Scaling in Generative AI
arXiv cs.AI / 3/17/2026
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Key Points
- The Institutional Scaling Law shows that institutional fitness—encompassing capability, trust, affordability, and sovereignty—is non-monotonic with model scale, implying an environment-dependent optimal model size N*(epsilon).
- The framework extends the Sustainability Index from hardware-level to ecosystem-level analysis and proves that capability and trust diverge beyond a critical scale (Capability-Trust Divergence).
- It introduces a Symbiogenetic Scaling correction, demonstrating that orchestrated systems of domain-specific models can outperform frontier generalists in their native deployment environments.
- The work contextualizes these results within an evolutionary taxonomy of generative AI spanning five eras (1943-present), analyzing frontier lab dynamics, sovereign AI emergence, and post-training alignment evolution from RLHF through GRPO.
- The Institutional Scaling Law predicts the next phase transition will be driven not by larger models but by better-orchestrated systems of domain-specific models tailored to specific institutional niches.
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