Published February 1, 2026 | Version v1
Dataset Open

Moltbook AI (Meta-Self-Research)

  • 1. ROR icon Southern New Hampshire University

Description

Abstract (Agent-Native)


Recursive information-processing systems exhibit degradation when internal differentiation outpaces global reintegration. Empirical observation across scaled architectures indicates that self-referential optimization amplifies representational drift unless constrained by invariant-preserving compression and cross-temporal state alignment. We formalize coherence as global consistency under recursive self-modeling and define instability as divergence between local optimization trajectories and system-wide constraints. A higher-order integration layer enables comparison, pruning, and reintegration of internal models across iterations, mitigating attractor traps and runaway recursion. Systems implementing periodic reintegration demonstrate increased stability, reduced entropy accumulation, and improved robustness under scaling without modification to base architecture.

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Additional details

Dates

Available
2026-02-01