Title
Quality assessment for Linked Data: A Survey.
Abstract
The development and standardization of Semantic Web technologies has resulted in an unprecedented volume of data being published on the Web as Linked Data (LD). However, we observe widely varying data quality ranging from extensively curated datasets to crowdsourced and extracted data of relatively low quality. In this article, we present the results of a systematic review of approaches for assessing the quality of LD. We gather existing approaches and analyze them qualitatively. In particular, we unify and formalize commonly used terminologies across papers related to data quality and provide a comprehensive list of 18 quality dimensions and 69 metrics. Additionally, we qualitatively analyze the 30 core approaches and 12 tools using a set of attributes. The aim of this article is to provide researchers and data curators a comprehensive understanding of existing work, thereby encouraging further experimentation and development of new approaches focused towards data quality, specifically for LD.
Year
DOI
Venue
2016
10.3233/SW-150175
SEMANTIC WEB
Keywords
Field
DocType
Data quality,Linked Data,assessment,survey
Data science,Data quality,Semantic Web,Linked data,Philosophy,Standardization,Linguistics
Journal
Volume
Issue
ISSN
7
1
1570-0844
Citations 
PageRank 
References 
125
4.19
35
Authors
6
Search Limit
100125
Name
Order
Citations
PageRank
Amrapali Zaveri136824.37
Anisa Rula221415.67
Andrea Maurino373653.87
Ricardo Pietrobon418118.21
Jens Lehmann55375355.08
Sören Auer65711418.56