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IRAM-Omega-Q: A Computational Architecture for Uncertainty Regulation in Artificial Agents

arXiv:2603.1602037.9h-index: 2
Predicted impact top 83% in AI · last 90 daysOriginality Incremental advance
AI Analysis

This provides a formal model for studying stability and control in AI systems, but it is incremental as it builds on existing concepts of uncertainty management without broad practical impact.

The authors tackled the problem of uncertainty regulation in artificial agents by developing IRAM-Omega-Q, a computational architecture using quantum-like state representations and adaptive control, and identified critical boundaries in regulation-noise space and distinct stability regimes from different control orderings.

Artificial agents can achieve strong task performance while remaining opaque with respect to internal regulation, uncertainty management, and stability under stochastic perturbation. We present IRAM-Omega-Q, a computational architecture that models internal regulation as closed-loop control over a quantum-like state representation. The framework uses density matrices instrumentally as abstract state descriptors, enabling direct computation of entropy, purity, and coherence-related metrics without invoking physical quantum processes. A central adaptive gain is updated continuously to maintain a target uncertainty regime under noise. Using systematic parameter sweeps, fixed-seed publication-mode simulations, and susceptibility-based phase-diagram analysis, we identify reproducible critical boundaries in regulation-noise space. We further show that alternative control update orderings, interpreted as perception-first and action-first architectures, induce distinct stability regimes under identical external conditions. These results support uncertainty regulation as a concrete architectural principle for artificial agents and provide a formal setting for studying stability, control, and order effects in cognitively inspired AI systems. The framework is presented as a technical model of adaptive regulation dynamics in artificial agents. It makes no claims regarding phenomenological consciousness, and the quantum-like formalism is used strictly as a mathematical representation for structured uncertainty and state evolution.

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