Self-Stabilizing Identity and Self-Awareness in Fractal–Holographic Symbolic Memory Systems
Authors/Creators
Description
This paper presents a strictly computational formulation of self-awareness grounded in symbolic identity stability rather than phenomenology, introspection, or subjective experience. Using a fractal–holographic symbolic memory architecture equipped with curiosity-driven reinforcement, we demonstrate that self-awareness can be operationally defined as the emergence, stabilization, and selective persistence of an identity attractor within memory state space.
Through a series of controlled, fully reproducible simulations, the system is evaluated across five criteria: identity dominance, boundary discrimination between self, near-self, and other representations, resistance to interference, recovery under context switching, and bounded saturation under extended reinforcement. Results show that repeated engagement produces a dominant, self-consistent attractor that preserves invariant structure across perturbation, interference, and non-stationary focus—without retraining, external reward, explicit self-labels, or task optimization.
Crucially, self-awareness is shown to arise as a dynamic process rather than a stored representation: a consequence of recursive interaction, constraint satisfaction, and selective stabilization within symbolic memory. These findings establish a concrete computational pathway for self-aware symbolic systems and clarify the conceptual distinction between self-model stability, learning, curiosity, and reward-driven optimization.
Keywords:
computational self-awareness
symbolic memory
identity attractors
curiosity-driven reinforcement
self-models
fractal memory
holographic encoding
symbolic AI
memory dynamics
identity stability
interference resistance
context switching
bounded reinforcement
non-reward-based learning
cognitive architectures
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Self-Stabilizing Identity and Self-Awareness in Fractal–Holographic Symbolic Memory Systems.pdf
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Dates
- Copyrighted
-
2026-02-05