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Main Authors: Sun, Yandong, Huang, Qiang, Xu, Ziwei, Sun, Yiqun, Tang, Yixuan, Tung, Anthony K. H.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.00852
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author Sun, Yandong
Huang, Qiang
Xu, Ziwei
Sun, Yiqun
Tang, Yixuan
Tung, Anthony K. H.
author_facet Sun, Yandong
Huang, Qiang
Xu, Ziwei
Sun, Yiqun
Tang, Yixuan
Tung, Anthony K. H.
contents Embedding spaces are fundamental to modern AI, translating raw data into high-dimensional vectors that encode rich semantic relationships. Yet, their internal structures remain opaque, with existing approaches often sacrificing semantic coherence for structural regularity or incurring high computational overhead to improve interpretability. To address these challenges, we introduce the Semantic Field Subspace (SFS), a geometry-preserving, context-aware representation that captures local semantic neighborhoods within the embedding space. We also propose SAFARI (SemAntic Field subspAce deteRmInation), an unsupervised, modality-agnostic algorithm that uncovers hierarchical semantic structures using a novel metric called Semantic Shift, which quantifies how semantics evolve as SFSes evolve. To ensure scalability, we develop an efficient approximation of Semantic Shift that replaces costly SVD computations, achieving a 15~30x speedup with average errors below 0.01. Extensive evaluations across six real-world text and image datasets show that SFSes outperform standard classifiers not only in classification but also in nuanced tasks such as political bias detection, while SAFARI consistently reveals interpretable and generalizable semantic hierarchies. This work presents a unified framework for structuring, analyzing, and scaling semantic understanding in embedding spaces.
format Preprint
id arxiv_https___arxiv_org_abs_2512_00852
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle One Swallow Does Not Make a Summer: Understanding Semantic Structures in Embedding Spaces
Sun, Yandong
Huang, Qiang
Xu, Ziwei
Sun, Yiqun
Tang, Yixuan
Tung, Anthony K. H.
Artificial Intelligence
Computation and Language
Machine Learning
Embedding spaces are fundamental to modern AI, translating raw data into high-dimensional vectors that encode rich semantic relationships. Yet, their internal structures remain opaque, with existing approaches often sacrificing semantic coherence for structural regularity or incurring high computational overhead to improve interpretability. To address these challenges, we introduce the Semantic Field Subspace (SFS), a geometry-preserving, context-aware representation that captures local semantic neighborhoods within the embedding space. We also propose SAFARI (SemAntic Field subspAce deteRmInation), an unsupervised, modality-agnostic algorithm that uncovers hierarchical semantic structures using a novel metric called Semantic Shift, which quantifies how semantics evolve as SFSes evolve. To ensure scalability, we develop an efficient approximation of Semantic Shift that replaces costly SVD computations, achieving a 15~30x speedup with average errors below 0.01. Extensive evaluations across six real-world text and image datasets show that SFSes outperform standard classifiers not only in classification but also in nuanced tasks such as political bias detection, while SAFARI consistently reveals interpretable and generalizable semantic hierarchies. This work presents a unified framework for structuring, analyzing, and scaling semantic understanding in embedding spaces.
title One Swallow Does Not Make a Summer: Understanding Semantic Structures in Embedding Spaces
topic Artificial Intelligence
Computation and Language
Machine Learning
url https://arxiv.org/abs/2512.00852