Assessing the quality of sources in Wikidata across languages: a hybrid approach

09/20/2021
by   Gabriel Amaral, et al.
0

Wikidata is one of the most important sources of structured data on the web, built by a worldwide community of volunteers. As a secondary source, its contents must be backed by credible references; this is particularly important as Wikidata explicitly encourages editors to add claims for which there is no broad consensus, as long as they are corroborated by references. Nevertheless, despite this essential link between content and references, Wikidata's ability to systematically assess and assure the quality of its references remains limited. To this end, we carry out a mixed-methods study to determine the relevance, ease of access, and authoritativeness of Wikidata references, at scale and in different languages, using online crowdsourcing, descriptive statistics, and machine learning. Building on previous work of ours, we run a series of microtasks experiments to evaluate a large corpus of references, sampled from Wikidata triples with labels in several languages. We use a consolidated, curated version of the crowdsourced assessments to train several machine learning models to scale up the analysis to the whole of Wikidata. The findings help us ascertain the quality of references in Wikidata, and identify common challenges in defining and capturing the quality of user-generated multilingual structured data on the web. We also discuss ongoing editorial practices, which could encourage the use of higher-quality references in a more immediate way. All data and code used in the study are available on GitHub for feedback and further improvement and deployment by the research community.

READ FULL TEXT

page 27

page 28

research
10/11/2017

The number of linked references of publications in Microsoft Academic in comparison with the Web of Science

In the context of a comprehensive Microsoft Academic (MA) study, we expl...
research
07/08/2022

Improving Wikipedia Verifiability with AI

Verifiability is a core content policy of Wikipedia: claims that are lik...
research
04/01/2020

GitHub Repositories with Links to Academic Papers: Open Access, Traceability, and Evolution

Traceability between published scientific breakthroughs and their implem...
research
03/09/2023

Longitudinal Assessment of Reference Quality on Wikipedia

Wikipedia plays a crucial role in the integrity of the Web. This work an...
research
01/31/2022

QALD-9-plus: A Multilingual Dataset for Question Answering over DBpedia and Wikidata Translated by Native Speakers

The ability to have the same experience for different user groups (i.e.,...
research
10/06/2020

'I Updated the <ref>': The Evolution of References in the English Wikipedia and the Implications for Altmetrics

With this work, we present a publicly available dataset of the history o...
research
06/09/2021

Catchphrase: Automatic Detection of Cultural References

A snowclone is a customizable phrasal template that can be realized in m...

Please sign up or login with your details

Forgot password? Click here to reset