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A Framework for Building Lightweight Ontologies Based on Semi-Structured Data for Semantic Annotation

机译:基于半结构化语义标注的轻量级本体构建框架

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摘要

The Semantic Web vision was created in 1999 by Tim Berners Lee. In 2001, The W3C declared the Semantic Web as the web of shared data. Hence, the realization of this vision requires linking definitions of concepts in web documents to a semantically integrated and interoperable structure to define a domain. This process is known as semantic annotation. However, the main challenge in the annotation process is the creation of domain ontologies.;This dissertation is proposing a framework for building lightweight domain ontologies, as instances of an interoperable semantic structure. We designed a multilayered interoperable semantic schema, to define lightweight domain ontologies. This is an extension of SKOS schema, and makes use of the Wikipedia structure for defining concepts. Also, we proposed a Wikipedia-based approach for extracting concepts for ontology learning.;We developed the experimental work using a prepared set of clustered concepts in a domain of interest, which is the Information Retrieval domain. We attained almost 85% accuracy in terms of the Rand Index and a precision value of about 45%. Then we used SPARQL queries, to extract relevant concept properties from DBpedia, and map it to the definition of the modeled annotation schema. The produced triples demonstrated a promising direction to explore for generating lightweight ontologies to be used for annotation. This is considered an important step towards the realization of the Linked Data vision of the Semantic Web.
机译:语义网愿景由Tim Berners Lee于1999年创建。在2001年,W3C宣布语义网为共享数据网。因此,要实现这一愿景,需要将Web文档中概念的定义链接到语义上集成且可互操作的结构以定义域。此过程称为语义注释。然而,注释过程中的主要挑战是领域本体的创建。本文提出了一种构建轻量级领域本体的框架,作为可互操作的语义结构的实例。我们设计了一个多层可互操作的语义模式,以定义轻量级领域本体。这是SKOS模式的扩展,并利用Wikipedia结构定义概念。此外,我们提出了一种基于维基百科的方法来提取用于本体学习的概念。;我们在感兴趣的域(即信息检索域)中使用一组准备好的聚类概念开发了实验工作。就兰德指数而言,我们达到了近85%的精度,而精度值约为45%。然后,我们使用SPARQL查询从DBpedia中提取相关的概念属性,并将其映射到建模注释模式的定义。生成的三元组显示了探索有希望的方向来生成用于注释的轻量级本体。这被认为是实现语义网“链接数据”愿景的重要一步。

著录项

  • 作者

    Ali, Elshaimaa Elsayed.;

  • 作者单位

    University of Louisiana at Lafayette.;

  • 授予单位 University of Louisiana at Lafayette.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 147 p.
  • 总页数 147
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:05

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