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Main Authors: Pendleton, Clive, Harrington, Ewan, Fairbrother, Giles, Arkwright, Jasper, Fenwick, Nigel, Katrix, Richard
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.10013
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author Pendleton, Clive
Harrington, Ewan
Fairbrother, Giles
Arkwright, Jasper
Fenwick, Nigel
Katrix, Richard
author_facet Pendleton, Clive
Harrington, Ewan
Fairbrother, Giles
Arkwright, Jasper
Fenwick, Nigel
Katrix, Richard
contents Hierarchical vector field interpolation introduces a structured probabilistic framework for lexical representation, ensuring that word embeddings transition smoothly across a continuous manifold rather than being constrained to discrete token mappings. The proposed methodology constructs a probabilistic function space where word representations adhere to topological consistency, mitigating representational discontinuities commonly observed in transformer-based embeddings. Empirical evaluations reveal that probabilistic constraints enhance lexical coherence by refining contextual relationships, leading to improvements in semantic stability across multiple linguistic distributions. The application of divergence minimization techniques ensures that interpolated embeddings maintain probabilistic consistency while preserving computational feasibility for large-scale implementations. Experimental findings demonstrate that interpolated lexical manifolds improve representation density alignment, reducing anisotropic distortions in contextual embedding distributions. Comparative analyses with standard transformer-based models highlight that structured interpolation yields more stable representations, particularly in tasks requiring fine-grained semantic differentiation. The statistical evaluation of embedding divergence confirms that probabilistic lexical manifolds reduce representational inconsistencies while maintaining coherence across varying scales of contextual abstraction. An assessment of computational efficiency reveals that while interpolation introduces minor processing overhead, the structured representation learning approach remains scalable for practical deployment.
format Preprint
id arxiv_https___arxiv_org_abs_2502_10013
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Probabilistic Lexical Manifold Construction in Large Language Models via Hierarchical Vector Field Interpolation
Pendleton, Clive
Harrington, Ewan
Fairbrother, Giles
Arkwright, Jasper
Fenwick, Nigel
Katrix, Richard
Computation and Language
Hierarchical vector field interpolation introduces a structured probabilistic framework for lexical representation, ensuring that word embeddings transition smoothly across a continuous manifold rather than being constrained to discrete token mappings. The proposed methodology constructs a probabilistic function space where word representations adhere to topological consistency, mitigating representational discontinuities commonly observed in transformer-based embeddings. Empirical evaluations reveal that probabilistic constraints enhance lexical coherence by refining contextual relationships, leading to improvements in semantic stability across multiple linguistic distributions. The application of divergence minimization techniques ensures that interpolated embeddings maintain probabilistic consistency while preserving computational feasibility for large-scale implementations. Experimental findings demonstrate that interpolated lexical manifolds improve representation density alignment, reducing anisotropic distortions in contextual embedding distributions. Comparative analyses with standard transformer-based models highlight that structured interpolation yields more stable representations, particularly in tasks requiring fine-grained semantic differentiation. The statistical evaluation of embedding divergence confirms that probabilistic lexical manifolds reduce representational inconsistencies while maintaining coherence across varying scales of contextual abstraction. An assessment of computational efficiency reveals that while interpolation introduces minor processing overhead, the structured representation learning approach remains scalable for practical deployment.
title Probabilistic Lexical Manifold Construction in Large Language Models via Hierarchical Vector Field Interpolation
topic Computation and Language
url https://arxiv.org/abs/2502.10013