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Ontology learning methods from text - an extensive knowledge-based approach

机译:文本中的本体学习方法 - 一种广泛的基于知识的方法

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Ontologies are a key element of the Semantic Web. They aim to capture basic knowledge by providing appropriate terms and formal relationships between them, so that they can be used in a machine-processable manner. Accordingly they enable automatic aggregation and practical use as well as unexpected reuse of distributed data sources. Ontologies may come from many different sources, pursuing different goals and quality criteria. However, performed manually ontology construction is a very complex and tedious task, thus many methods proposed offer automatic or semi-automatic way for ontology construction. Many of the methods have their own, specific features. Therefore, this paper proposes an extensive knowledge-based approach covering the domain of ontology learning methods from text. This work aims to collect the knowledge of available approaches for ontology learning and the prominent differences between them, drawing on best practices in ontology engineering. The proposed approach refers to methods and aims to enrich knowledge in the field of ontology learning (OL). In this paper, the author’s ontology contains a set of various types of methods with main techniques used, and the necessary features in the miscellaneous approaches. The proposed an extensive knowledge-based approach uses a reasoning mechanism based on competency questions for individual approaches to determine their ontology learning method profiles. The validation stage has also been carried out. At the same time, it is an extension of the previous study in the form of a repository of knowledge about OL tools. In addition, the combination of both ontologies: tools and methods aim to provide a more efficient OL solution from text.
机译:本体是语义网络的关键元素。他们旨在通过在它们之间提供适当的条款和正式的关系来捕捉基本知识,以便它们可以以机器可处理的方式使用。因此,它们能够实现自动聚合和实际使用以及分布式数据源的意外重用。本体可能来自许多不同的来源,追求不同的目标和质量标准。然而,手动本体建设是一个非常复杂和繁琐的任务,因此许多方法提出了为本体建设提供自动或半自动的方式。许多方法都有自己的特定功能。因此,本文提出了一种广泛的基于知识的方法,涵盖了文本的本体学习方法领域。这项工作旨在收集本体学习的可用方法以及它们之间的突出差异,借鉴本体工程中的最佳实践。该方法是指方法,旨在丰富本体学习领域的知识(OL)。在本文中,作者的本体中包含了一组各种类型的方法,其中使用了主要技术,以及杂项方法中的必要功能。提出了广泛的知识方法使用了基于个人方法来确定其本体学习方法配置文件的能力问题的推理机制。还进行了验证阶段。与此同时,它是前一项研究的延伸,以关于OL工具的知识库的形式。此外,本体:工具和方法的组合旨在提供一种从文本提供更有效的OL解决方案。

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