This repository contains the full manuscript and reproducible figure set for: Structural Emergence of Intelligence (SEI) v2. 1 This work presents a unified and quantitative framework in which intelligence is not treated as a domain-specific phenomenon, but as a scale-invariant structural emergence governed by general constraints. The central result is a minimal and falsifiable condition: C · Γ · dSC/dt > Θ (E, S, T) where: - C represents effective structural density, - Γ represents fixation or stabilization, - dSC/dt represents persistence of structured organization, - Θ (E, S, T) is a context-dependent emergence threshold. In SEI v2. 1, the threshold Θ is explicitly treated as a structured, non-uniform functional of environment, system scale, and temporal regime. This leads to the introduction of a threshold landscape and a bounded emergence region. A key concept is the Structural Emergence Window (SEW), defined as the region in (C, Γ, dSC/dt) space where intelligence can stably emerge. Outside this region, intelligence is suppressed due to: - insufficient structural density (under-structured systems), - instability or fragmentation (collapse of fixation), - overscaled collapse (loss of coherent persistence). The framework unifies natural systems (galactic and planetary environments) and artificial systems (machine learning models) under a common structural interpretation. It further explains why intelligence does not scale monotonically with size, providing a structural explanation for both emergence and failure. This repository includes: - the full manuscript (PDF), - all figures used in the paper (Fig1–Fig7), - a reproducible Python script for figure generation. The theory is designed to be minimal, testable, and applicable across domains such as: - artificial intelligence scaling, - complex systems, - astrobiology and extraterrestrial intelligence search (SETI). SEI v2. 1 represents a transition from conceptual formulation to a quantitative and testable theory of intelligence emergence.
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Koji Okino
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Koji Okino (Wed,) studied this question.
www.synapsesocial.com/papers/69e1ceaa5cdc762e9d857a90 — DOI: https://doi.org/10.5281/zenodo.19594701