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Building Semantic Knowledge Graphs from (Semi-)Structured Data: A Review

期刊

FUTURE INTERNET
卷 14, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/fi14050129

关键词

Semantic Web; linked data; knowledge graphs; structured data; semi-structured data

资金

  1. European Commission [101016835]
  2. NFR BigDataMine project [309691]
  3. SINTEF

向作者/读者索取更多资源

Knowledge graphs have been a popular topic in the past decade, with Semantic Web, linked data, and ontologies playing crucial roles in data integration and analysis. Creating knowledge graphs from structured and semi-structured data sources using Semantic Web technologies can provide well-defined meaning to information and services, but also come with challenges and limitations.
Knowledge graphs have, for the past decade, been a hot topic both in public and private domains, typically used for large-scale integration and analysis of data using graph-based data models. One of the central concepts in this area is the Semantic Web, with the vision of providing a well-defined meaning to information and services on the Web through a set of standards. Particularly, linked data and ontologies have been quite essential for data sharing, discovery, integration, and reuse. In this paper, we provide a systematic literature review on knowledge graph creation from structured and semi-structured data sources using Semantic Web technologies. The review takes into account four prominent publication venues, namely, Extended Semantic Web Conference, International Semantic Web Conference, Journal of Web Semantics, and Semantic Web Journal. The review highlights the tools, methods, types of data sources, ontologies, and publication methods, together with the challenges, limitations, and lessons learned in the knowledge graph creation processes.

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