Title: A Universal Density × MA Model for Raw Qualia: On the Human Being as a Negentropy Abstract: This paper presents a simple, classical computational model for the emergence of raw qualia in a low-energy brain (~20 W). The Neural Primitive layer computes a single operator Q (t) = Dₑff (t) × MA (t), where Dₑff (t) is current input connection density and MA (t) is historical assembly depth tracked by a moving average. This multiplicative interaction generates a continuous phase gradient — the dynamic flow of subjective experience itself. The model operates entirely within classical neurobiology, requires no quantum coherence, and exhibits phenomenal scale invariance (Q′ = λ² Q). Empirical validation on 248 OpenNeuro subjects reveals a stable critical threshold Qcrit ≈ 0. 312 (99. 6% accuracy) that separates conscious and unconscious states, together with state-dependent shifts in the “thickness of the present moment” (α). A public live verification using Meta’s TRIBE v2 multimodal demo (March 27, 2026) and comparative simulation further confirmed the model’s distinctive non-linear dynamics and phenomenal continuity. The framework reframes the Hard Problem by demonstrating that raw qualia is the mathematically and thermodynamically unavoidable outcome of a local negentropy engine. All code, preprocessing pipelines, and validation scripts are openly available in the accompanying “DensityMAValidationCode” repository. Data Availability: - Main paper PDF- Supplement S1 v2. 2 (Empirical Validation) - Full reproducibility package: DensityMAValidationCode (MNE-Python preprocessing + 10-fold CV + D (t) /MA (t) /Q (t) engine) - Universal RawQualiaDensityMA v8. 0 engine- DensityMAOS v13. 5 (practical chatbot implementation)
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仁定 五十嵐 (Tue,) studied this question.
www.synapsesocial.com/papers/69f6e6ab8071d4f1bdfc75be — DOI: https://doi.org/10.5281/zenodo.19949676
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仁定 五十嵐
Chigasaki Rehabilitation College
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