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The Problem of Learning Non-taxonomic Relationships of Ontologies from Text

机译:从文本中学习非分类学关系的问题

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Manual construction of ontologies by domain experts and knowledge engineers is a costly task. Thus, automatic and/or semi-automatic approaches to their development arc needed. Ontology Learning aims at identifying its constituent elements, such as non-taxonomic relationships, from textual information sources. This article presents a discussion of the problem of Learning Non-Taxonomic Relationships of Ontologies and defines its generic process. Three techniques representing the state of the art of Learning Non-Taxonomic Relationships of Ontologies are described and the solutions they provide are discussed along with their advantages and limitations.
机译:通过域专家和知识工程师手动构建本体,知识工程师是一个昂贵的任务。因此,需要自动和/或半自动的发展方法,需要ARC。本体学习旨在从文本信息来源识别其组成元素,例如非分类关系。本文讨论了学习非分类学关系的本体论的问题,并定义其通用过程。描述了代表学习非分类学的艺术状态的技术的三种技术,并讨论了它们提供的解决方案以及它们的优点和限制。

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