Named Entity Extraction for Knowledge Graphs: A Literature Overview

An enormous amount of digital information is expressed as natural-language (NL) text that is not easily processable by computers. Knowledge Graphs (KG) offer a widely used format for representing information in computer-processable form. Natural Language Processing (NLP) is therefore needed for mini...

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Main Authors: Tareq Al-Moslmi, Marc Gallofre Ocana, Andreas L. Opdahl, Csaba Veres
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8999622/
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spelling doaj-c207953683e0435ca27585bf5796b6592021-03-30T01:27:00ZengIEEEIEEE Access2169-35362020-01-018328623288110.1109/ACCESS.2020.29739288999622Named Entity Extraction for Knowledge Graphs: A Literature OverviewTareq Al-Moslmi0https://orcid.org/0000-0002-5296-2709Marc Gallofre Ocana1https://orcid.org/0000-0001-7637-3303Andreas L. Opdahl2Csaba Veres3Department of Information Science and Media Studies, University of Bergen, Bergen, NorwayDepartment of Information Science and Media Studies, University of Bergen, Bergen, NorwayDepartment of Information Science and Media Studies, University of Bergen, Bergen, NorwayDepartment of Information Science and Media Studies, University of Bergen, Bergen, NorwayAn enormous amount of digital information is expressed as natural-language (NL) text that is not easily processable by computers. Knowledge Graphs (KG) offer a widely used format for representing information in computer-processable form. Natural Language Processing (NLP) is therefore needed for mining (or lifting) knowledge graphs from NL texts. A central part of the problem is to extract the named entities in the text. The paper presents an overview of recent advances in this area, covering: Named Entity Recognition (NER), Named Entity Disambiguation (NED), and Named Entity Linking (NEL). We comment that many approaches to NED and NEL are based on older approaches to NER and need to leverage the outputs of state-of-the-art NER systems. There is also a need for standard methods to evaluate and compare named-entity extraction approaches. We observe that NEL has recently moved from being stepwise and isolated into an integrated process along two dimensions: the first is that previously sequential steps are now being integrated into end-to-end processes, and the second is that entities that were previously analysed in isolation are now being lifted in each other's context. The current culmination of these trends are the deep-learning approaches that have recently reported promising results.https://ieeexplore.ieee.org/document/8999622/Knowledge graphsnatural-language processingnamed-entity extractionnamed-entity recognitionnamed-entity disambiguationnamed-entity linking
collection DOAJ
language English
format Article
sources DOAJ
author Tareq Al-Moslmi
Marc Gallofre Ocana
Andreas L. Opdahl
Csaba Veres
spellingShingle Tareq Al-Moslmi
Marc Gallofre Ocana
Andreas L. Opdahl
Csaba Veres
Named Entity Extraction for Knowledge Graphs: A Literature Overview
IEEE Access
Knowledge graphs
natural-language processing
named-entity extraction
named-entity recognition
named-entity disambiguation
named-entity linking
author_facet Tareq Al-Moslmi
Marc Gallofre Ocana
Andreas L. Opdahl
Csaba Veres
author_sort Tareq Al-Moslmi
title Named Entity Extraction for Knowledge Graphs: A Literature Overview
title_short Named Entity Extraction for Knowledge Graphs: A Literature Overview
title_full Named Entity Extraction for Knowledge Graphs: A Literature Overview
title_fullStr Named Entity Extraction for Knowledge Graphs: A Literature Overview
title_full_unstemmed Named Entity Extraction for Knowledge Graphs: A Literature Overview
title_sort named entity extraction for knowledge graphs: a literature overview
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description An enormous amount of digital information is expressed as natural-language (NL) text that is not easily processable by computers. Knowledge Graphs (KG) offer a widely used format for representing information in computer-processable form. Natural Language Processing (NLP) is therefore needed for mining (or lifting) knowledge graphs from NL texts. A central part of the problem is to extract the named entities in the text. The paper presents an overview of recent advances in this area, covering: Named Entity Recognition (NER), Named Entity Disambiguation (NED), and Named Entity Linking (NEL). We comment that many approaches to NED and NEL are based on older approaches to NER and need to leverage the outputs of state-of-the-art NER systems. There is also a need for standard methods to evaluate and compare named-entity extraction approaches. We observe that NEL has recently moved from being stepwise and isolated into an integrated process along two dimensions: the first is that previously sequential steps are now being integrated into end-to-end processes, and the second is that entities that were previously analysed in isolation are now being lifted in each other's context. The current culmination of these trends are the deep-learning approaches that have recently reported promising results.
topic Knowledge graphs
natural-language processing
named-entity extraction
named-entity recognition
named-entity disambiguation
named-entity linking
url https://ieeexplore.ieee.org/document/8999622/
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AT marcgallofreocana namedentityextractionforknowledgegraphsaliteratureoverview
AT andreaslopdahl namedentityextractionforknowledgegraphsaliteratureoverview
AT csabaveres namedentityextractionforknowledgegraphsaliteratureoverview
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