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Ontology-Based Knowledge Acquisition Method for Natural Language Texts

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  • Longwei Qian

Abstract

The main task of knowledge acquisition (also named knowledge extraction) from natural language texts is to extract knowledge from natural language texts into fragment of knowledge base of intelligent system. Through the induction of the related literature about knowledge acquisition at a home country and abroad, this paper analyses the strengths and weaknesses of the classical approach. After emphatically researching the rulebased knowledge extraction technology and the method of building ontology of linguistics, this article proposes a solution to the implementation of knowledge acquisition based on the OSTIS technology. The main feature of this solution is to construct a unified semantic model that is able to utilize ontologies of linguistics (mainly, syntactic and semantic aspect) and integrate various problem-solving models (e. g., rule-based models, neural network models) for solving knowledge extraction process from natural language texts.

Suggested Citation

  • Longwei Qian, 2023. "Ontology-Based Knowledge Acquisition Method for Natural Language Texts," Digital Transformation, Educational Establishment “Belarusian State University of Informatics and Radioelectronicsâ€, vol. 29(1).
  • Handle: RePEc:abx:journl:y:2023:id:742
    DOI: 10.35596/1729-7648-2023-29-1-57-63
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