What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web

Linked Open Data promises to provide guiding principles to publish interlinked knowledge graphs on the Web in the form of findable, accessible, interoperable and reusable datasets. We argue that while as such, Linked Data may be viewed as a basis for instantiating the FAIR principles, there are stil...

Full description

Bibliographic Details
Main Authors: Haller, Armin, Fernández, Javier D., Kamdar, Maulik R., Polleres, Axel
Format: Others
Language:en
Published: Department für Informationsverarbeitung und Prozessmanagement, WU Vienna University of Economics and Business 2019
Online Access:http://epub.wu.ac.at/7193/1/20191002ePub_LOD_link_analysis.pdf
id ndltd-VIENNA-oai-epub.wu-wien.ac.at-7193
record_format oai_dc
spelling ndltd-VIENNA-oai-epub.wu-wien.ac.at-71932019-10-07T04:40:28Z What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web Haller, Armin Fernández, Javier D. Kamdar, Maulik R. Polleres, Axel Linked Open Data promises to provide guiding principles to publish interlinked knowledge graphs on the Web in the form of findable, accessible, interoperable and reusable datasets. We argue that while as such, Linked Data may be viewed as a basis for instantiating the FAIR principles, there are still a number of open issues that cause significant data quality issues even when knowledge graphs are published as Linked Data. Firstly, in order to define boundaries of single coherent knowledge graphs within Linked Data, a principled notion of what a dataset is, or, respectively, what links within and between datasets are, has been missing. Secondly, we argue that in order to enable FAIR knowledge graphs, Linked Data misses standardised findability and accessability mechanism, via a single entry link. In order to address the first issue, we (i) propose a rigorous definition of a naming authority for a Linked Data dataset (ii) define different link types for data in Linked datasets, (iii) provide an empirical analysis of linkage among the datasets of the Linked Open Data cloud, and (iv) analyse the dereferenceability of those links. We base our analyses and link computations on a scalable mechanism implemented on top of the HDT format, which allows us to analyse quantity and quality of different link types at scale. Department für Informationsverarbeitung und Prozessmanagement, WU Vienna University of Economics and Business 2019-09-30 Paper NonPeerReviewed en application/pdf http://epub.wu.ac.at/7193/1/20191002ePub_LOD_link_analysis.pdf Series: Working Papers on Information Systems, Information Business and Operations http://epub.wu.ac.at/7193/
collection NDLTD
language en
format Others
sources NDLTD
description Linked Open Data promises to provide guiding principles to publish interlinked knowledge graphs on the Web in the form of findable, accessible, interoperable and reusable datasets. We argue that while as such, Linked Data may be viewed as a basis for instantiating the FAIR principles, there are still a number of open issues that cause significant data quality issues even when knowledge graphs are published as Linked Data. Firstly, in order to define boundaries of single coherent knowledge graphs within Linked Data, a principled notion of what a dataset is, or, respectively, what links within and between datasets are, has been missing. Secondly, we argue that in order to enable FAIR knowledge graphs, Linked Data misses standardised findability and accessability mechanism, via a single entry link. In order to address the first issue, we (i) propose a rigorous definition of a naming authority for a Linked Data dataset (ii) define different link types for data in Linked datasets, (iii) provide an empirical analysis of linkage among the datasets of the Linked Open Data cloud, and (iv) analyse the dereferenceability of those links. We base our analyses and link computations on a scalable mechanism implemented on top of the HDT format, which allows us to analyse quantity and quality of different link types at scale. === Series: Working Papers on Information Systems, Information Business and Operations
author Haller, Armin
Fernández, Javier D.
Kamdar, Maulik R.
Polleres, Axel
spellingShingle Haller, Armin
Fernández, Javier D.
Kamdar, Maulik R.
Polleres, Axel
What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
author_facet Haller, Armin
Fernández, Javier D.
Kamdar, Maulik R.
Polleres, Axel
author_sort Haller, Armin
title What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
title_short What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
title_full What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
title_fullStr What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
title_full_unstemmed What are Links in Linked Open Data? A Characterization and Evaluation of Links between Knowledge Graphs on the Web
title_sort what are links in linked open data? a characterization and evaluation of links between knowledge graphs on the web
publisher Department für Informationsverarbeitung und Prozessmanagement, WU Vienna University of Economics and Business
publishDate 2019
url http://epub.wu.ac.at/7193/1/20191002ePub_LOD_link_analysis.pdf
work_keys_str_mv AT hallerarmin whatarelinksinlinkedopendataacharacterizationandevaluationoflinksbetweenknowledgegraphsontheweb
AT fernandezjavierd whatarelinksinlinkedopendataacharacterizationandevaluationoflinksbetweenknowledgegraphsontheweb
AT kamdarmaulikr whatarelinksinlinkedopendataacharacterizationandevaluationoflinksbetweenknowledgegraphsontheweb
AT polleresaxel whatarelinksinlinkedopendataacharacterizationandevaluationoflinksbetweenknowledgegraphsontheweb
_version_ 1719262794703962112