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A Short Review for Ontology Learning: Stride to Large Language Models Trend (2404.14991v2)

Published 23 Apr 2024 in cs.IR

Abstract: Ontologies provide formal representation of knowledge shared within Semantic Web applications. Ontology learning involves the construction of ontologies from a given corpus. In the past years, ontology learning has traversed through shallow learning and deep learning methodologies, each offering distinct advantages and limitations in the quest for knowledge extraction and representation. A new trend of these approaches is relying on LLMs to enhance ontology learning. This paper gives a review in approaches and challenges of ontology learning. It analyzes the methodologies and limitations of shallow-learning-based and deep-learning-based techniques for ontology learning, and provides comprehensive knowledge for the frontier work of using LLMs to enhance ontology learning. In addition, it proposes several noteworthy future directions for further exploration into the integration of LLMs with ontology learning tasks.

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Authors (4)
  1. Rick Du (1 paper)
  2. Huilong An (1 paper)
  3. Keyu Wang (10 papers)
  4. Weidong Liu (46 papers)
Citations (1)