Measure-Theoretic Inevitability
Measure-Theoretic Inevitability
Consider a substrate-environment prior: a probability measure over tuples representing physical substrates (degrees of freedom, interactions, constraints), environments (gradients, perturbations, resource availability), and initial conditions. Call a broad prior if it assigns non-negligible measure to sustained gradients (nonzero flux for times relaxation times), sufficient dimensionality ( large enough for complex attractors), locality (interactions falling off with distance), and bounded noise (stochasticity not overwhelming deterministic structure).
Under such a prior, self-modeling systems are typical. Define:
Then:
for some small depending on the fraction of substrates that lack sufficient computational capacity.
- Probability of structured attractors as gradient strength increases (bifurcation theory)
- Given structured attractors, probability of boundary formation as time increases (combinatorial exploration of configurations)
- Given boundaries, probability of effective regulation for self-maintaining structures (by definition of “self-maintaining”)
- Given regulation, world model is implied (POMDP sufficiency)
- Given world model in self-effecting regime, self-model has positive selection pressure
The only obstruction is substrates lacking the computational capacity to support recursive modeling, which is measure-zero under sufficiently rich priors.
□Inevitability means typicality in the ensemble. The null hypothesis is not "nothing interesting happens" but "something finds a basin and stays there," because that's what driven nonlinear systems do. Self-modeling attractors are among the accessible basins wherever environments are complex enough that self-effects matter. Empirical validation is emerging: in protocell agent experiments (V20–V31), self-modeling develops in 100% of seeds from random initialization — self-models are indeed typical. High integration () develops in approximately 30% of seeds, with the variance dominated by evolutionary trajectory, not initial conditions. The ensemble fraction for self-modeling is near unity; the fraction for rich integration is substantial but stochastic, consistent with the distinction between typicality (the structure will emerge) and universality (every trajectory reaches it).