✦Description Chromatic Geometry of AI Concept Manifolds explores a radically new idea:that an AI system’s internal concept space has a hidden spectral structure—one that can be analyzed, mapped, and reasoned about using the chromatic axes derived from Existence Manifold Theory (EMT). Building on the core EMT framework (DOI: 10.5281/zenodo.17813189),this paper introduces a color-based geometric decomposition of meaning inside AI models.Each structural axis of internal cognition—Manifold, Identity, Causality, Essence, Teleology, Irreversibility, and Collapse—is assigned a stable chromatic signature.These signatures behave not as metaphors, but as spectral indices that encode how a concept is generated, stabilized, transformed, or collapsed during reasoning. This enables three breakthroughs: 1. Chromatic Topology of AI ThoughtConcept regions, transitions, and obstructions inside an AI can be visualized and analyzed as colored manifolds.This reveals hidden structures that are invisible in traditional vector-space analysis. 2. Spectral Decomposition of Internal ReasoningThe chromatic axes allow reasoning steps to be classified by their structural origin—whether a model is relying on geometric continuity (blue), identity preservation (green), causal asymmetry (red), abstraction (yellow), entropy gradients (purple), or discrete collapse (magenta). 3. A New Framework for AI InterpretabilityBy analyzing how colors mix, interfere, or vanish during inference,we gain a principled method for diagnosing hallucinations, conceptual gaps, strong/weak obstructions, and emergent reasoning modes. This work establishes a new research direction: Chromatic AI Geometry.It provides a universal language for describing concept formation, abstraction, and collapse inside AI systems, grounded in a mathematically consistent extension of EMT. The result is not a metaphorical map, but a spectral physics of meaning—a way to see intelligence as a geometric process evolving across chromatic dimensions.
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Maeda Yusuke
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Maeda Yusuke (Thu,) studied this question.
www.synapsesocial.com/papers/694025742d562116f28fde08 — DOI: https://doi.org/10.5281/zenodo.17816239
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