TY - GEN
T1 - Minimizing Hyperbolic Embedding Distortion with LLM-Guided Hierarchy Restructuring
AU - Ayoughi, Melika
AU - Mettes, Pascal
AU - Groth, Paul
N1 - Publisher Copyright:
© 2025 Copyright held by the owner/author(s).
PY - 2025/12/9
Y1 - 2025/12/9
N2 - Hyperbolic geometry is an effective geometry for embedding hierarchical data structures. Hyperbolic learning has therefore become increasingly prominent in machine learning applications where data is hierarchically organized or governed by hierarchical semantics, ranging from recommendation systems to computer vision. The quality of hyperbolic embeddings is tightly coupled to the structure of the input hierarchy, which is often derived from knowledge graphs or ontologies. Recent work has uncovered that for an optimal hyperbolic embedding, a high branching factor and single inheritance are key, while embedding algorithms are robust to imbalance and hierarchy size. To assist knowledge engineers in reorganizing hierarchical knowledge, this paper investigates whether Large Language Models (LLMs) have the ability to automatically restructure hierarchies to meet these criteria. We propose a prompt-based approach to transform existing hierarchies using LLMs, guided by known desiderata for hyperbolic embeddings. Experiments on 16 diverse hierarchies show that LLM-restructured hierarchies consistently yield higher-quality hyperbolic embeddings across several standard embedding quality metrics. Moreover, we show how LLM-guided hierarchy restructuring enables explainable reorganizations, providing justifications to knowledge engineers.
AB - Hyperbolic geometry is an effective geometry for embedding hierarchical data structures. Hyperbolic learning has therefore become increasingly prominent in machine learning applications where data is hierarchically organized or governed by hierarchical semantics, ranging from recommendation systems to computer vision. The quality of hyperbolic embeddings is tightly coupled to the structure of the input hierarchy, which is often derived from knowledge graphs or ontologies. Recent work has uncovered that for an optimal hyperbolic embedding, a high branching factor and single inheritance are key, while embedding algorithms are robust to imbalance and hierarchy size. To assist knowledge engineers in reorganizing hierarchical knowledge, this paper investigates whether Large Language Models (LLMs) have the ability to automatically restructure hierarchies to meet these criteria. We propose a prompt-based approach to transform existing hierarchies using LLMs, guided by known desiderata for hyperbolic embeddings. Experiments on 16 diverse hierarchies show that LLM-restructured hierarchies consistently yield higher-quality hyperbolic embeddings across several standard embedding quality metrics. Moreover, we show how LLM-guided hierarchy restructuring enables explainable reorganizations, providing justifications to knowledge engineers.
KW - Hierarchical Representation
KW - Hyperbolic Learning
KW - Machine Learning
KW - Ontology Design
KW - Ontology Engineering
UR - https://www.scopus.com/pages/publications/105024936133
U2 - 10.1145/3731443.3771357
DO - 10.1145/3731443.3771357
M3 - Contribución a la conferencia
AN - SCOPUS:105024936133
T3 - K-CAP 2025 - Proceedings of the 13th Knowledge Capture Conference 2025
SP - 123
EP - 130
BT - K-CAP 2025 - Proceedings of the 13th Knowledge Capture Conference 2025
A2 - Shimizu, Cogan
A2 - Ferrada, Sebastian
A2 - Kagal, Lalana
PB - Association for Computing Machinery, Inc
T2 - 13th International Conference on Knowledge Capture, K-CAP 2025
Y2 - 10 December 2025 through 12 December 2025
ER -