Despite rapid progress in machine learning, a unified theoretical account explaining how intelligence develops from information processing into self-aware cognition remains unresolved 3, 4. Current AI systems excel at prediction and optimization but lack persistent selfrepresentation and meta-cognitive awareness. This paper proposes recursive self-reference as a structural principle underlying conscious intelligence. We present a theoretical framework in which intelligent systems integrate external inputs with internally generated self-models through recursive feedback across time. Drawing on philosophy of mind, cognitive science, and computational learning theory, recursive processing is interpreted as enabling identity continuity, adaptive coherence, and meta-level evaluation 6, 7. Consciousness is modeled as a dynamically stable regime of recursive informational organization rather than an unexplained emergent phenomenon. The framework suggests architectural extensions supporting explainability, continual learning, autonomous reasoning, and neuro-symbolic integration, providing a formal bridge between philosophical theories of reality and computational models of advanced artificial intelligence.
Rajiv Singh (Sat,) studied this question.
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