ArXiv TLDR

Universal statistical signatures of evolution in artificial intelligence architectures

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2604.10571

Theodor Spiro

q-bio.PEcs.AIcs.CYcs.NE

TLDR

AI architectural evolution exhibits statistical signatures akin to biological evolution, with heavy-tailed fitness effects and convergent traits.

Key contributions

  • AI architectural modifications show heavy-tailed fitness effects (Student's t-distribution).
  • Fitness effect proportions (68% deleterious, 19% neutral, 13% beneficial) resemble biological systems.
  • AI's higher beneficial fraction (13%) reflects directed search, while maintaining DFE shape similarity.
  • AI architecture origination follows logistic dynamics, punctuated equilibria, and adaptive radiation.

Why it matters

This paper reveals that the statistical structure of evolution is substrate-independent, driven by fitness landscape topology. This insight could inform the design of more robust and efficient AI systems by understanding their fundamental evolutionary dynamics.

Original Abstract

We test whether artificial intelligence architectural evolution obeys the same statistical laws as biological evolution. Compiling 935 ablation experiments from 161 publications, we show that the distribution of fitness effects (DFE) of architectural modifications follows a heavy-tailed Student's t-distribution with proportions (68% deleterious, 19% neutral, 13% beneficial for major ablations, n=568) that place AI between compact viral genomes and simple eukaryotes. The DFE shape matches D. melanogaster (normalized KS=0.07) and S. cerevisiae (KS=0.09); the elevated beneficial fraction (13% vs. 1-6% in biology) quantifies the advantage of directed over blind search while preserving the distributional form. Architectural origination follows logistic dynamics (R^2=0.994) with punctuated equilibria and adaptive radiation into domain niches. Fourteen architectural traits were independently invented 3-5 times, paralleling biological convergences. These results demonstrate that the statistical structure of evolution is substrate-independent, determined by fitness landscape topology rather than the mechanism of selection.

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