We propose a research program, in the tradition of the Erlangen and Hilbert programs, to unify three ongoing developments: the geometric turn in deep learning, the emergence of neural manifolds as the operative language of cognitive neuroscience, and the growing availability of high-dimensional representations of cultural artifacts. The central hypothesis is that cognition is best modeled not as a single shared embedding space, but as a fiber bundle: a base manifold of general cognitive function with modality-specific fibers (literary, musical, visual) attached above it. Within this structure, memory, reasoning, and association correspond to three mathematically distinct geometric objects: localization in a potential landscape, geodesic flow on the base, and parallel transport between fibers. The program's methodological commitment is to reconstruct the geometry of transitions rather than to analyze static representations. It proposes seven measurable signatures of a cultural school's transition geometry, hypothesizes that three well-documented literary movements (Imagism, high-modernist stream of consciousness, the Beat Generation) occupy distinct dynamical regimes on the English-language literary fiber, and outlines how the same structure extends to music and visual art. The mathematical core rests on three already-mature pillars: information geometry, non-equilibrium statistical mechanics, and gauge/bundle theory. The program also carries direct implications for next-generation AI design, diagnosing several limitations of current multimodal systems as consequences of flattening the fiber structure into a shared embedding space. This is a research-program proposal, in the tradition of Erlangen-style manifestos: it sketches a framework, states its testable predictions, and invites collaboration across physics, neuroscience, computational humanities, and AI architecture.
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Gunn Kim
Sejong University
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Gunn Kim (Tue,) studied this question.
www.synapsesocial.com/papers/69e9baeb85696592c86ecd7c — DOI: https://doi.org/10.5281/zenodo.19679725