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arxiv:2511.08243
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A Unified Geometric Field Theory Framework for Transformers: From Manifold Embeddings to Kernel Modulation

Published on Nov 11, 2025
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Abstract

The paper presents a theoretical framework that interprets Transformer layers as kernel-modulated operators acting over embedded manifolds by mapping discrete positions to continuous spatial functions.

The Transformer architecture has achieved tremendous success in natural language processing, computer vision, and scientific computing through its self-attention mechanism. However, its core components-positional encoding and attention mechanisms-have lacked a unified physical or mathematical interpretation. This paper proposes a structural theoretical framework that integrates positional encoding, kernel integral operators, and attention mechanisms for in-depth theoretical investigation. We map discrete positions (such as text token indices and image pixel coordinates) to spatial functions on continuous manifolds, enabling a field-theoretic interpretation of Transformer layers as kernel-modulated operators acting over embedded manifolds.

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