oalogo2  

AUTHOR(S): 

Roumen Trifonov, Galya Pavlova

 

TITLE

Methodology for Assessment of Open Data

pdf PDF

ABSTRACT

The Open Data goal is similar to the other open data movements – Open Sources, Open Access etc. Although the Open Data philosophy is defined long time ago, the term gains popularity with the Internet and World Wide Web - WWW rise and mostly with the Open Data initiatives Data.gov and Data.gov.uk. The curiosity of the world enforces the Big Data to become Open and then to connect the available open data in linked. In this article is presented a comprehensive review of established methodologies for assess the data quality. It is proposed a multistep integrated approach for quality assessment of Open data as the methodology for its evaluation.

KEYWORDS

Open data, linked data, open knowledge, open data cloud, methodology, assessment

REFERENCES

[1] Amrapali Zaveri, Anisa Rula, Andrea Maurino, Ricardo Pietrobon, Jens Lehmann and Soren Auer Quality Assessment Methodologies for Linked Open Data, Semantic Web, 1, 2012, 1–5 1 IOS Pres

[2] DBpedia available at: http://wiki.dbpedia.org/

[3] Friend of a Friend available at: http://www.foaf-project.org/

[4] GoPubMed available at: http://www.gopubmed.com/web/gopubmed/ww w/GoPubMed/Search/index.

[5] Illumine Nextbio Research available at: https://www.nextbio.com/b/authentication/logi n.nb

[6] ANSI American National Standards Institute (2004) Understanding Metadata (available at: http://www.niso.org/publications/press/Underst andingMetadata.pdf)

[7] Juran, Joseph M. and A. Blanton Godfrey, Juran's Quality Handbook, Fifth Edition, McGraw-Hill, 1999.

[8] Pipino, L., Lee, Y. W., AND Wang, R. Y. Data quality assessment. Communications of the ACM 45, 4 , 2002.

[9] BATINI, C., AND SCANNAPIECO, M. Data Quality: Concepts, Methodologies and Techniques (Data-Centric Systems and Applications). Springer-Verlag New York, Inc., Secaucus, NJ, USA, 2006.

[10] Juran, J. The Quality Control Handbook, McGraw-Hill, New York, 1974.

[11] Wang, R. Y., and Strong, D. M. Beyond accuracy: what data quality means to data consumers. Journal of Management Information Systems, 1996, 12, 4, pp. 5-33.

[12] Lei, Y., Nikolov, A., Uren, V., and Motta, E. Detecting quality problems in semantic metadata without the presence of a gold standard. In Workshop on “Evaluation of Ontologies for the Web ” (EON) at the WWW, 2007, pp. 51-60.

[13] Gueret, C., Groth, P., Stadler, C., and Lehmann, J. Assessing linked data mappings using network measures. In ESWC, 2012.

[14] Bizer, C., and Cyganiak, R. Quality-driven information filtering using the wiqa policy framework. Web Semantics, 2009, 7, 1-10.

[15] Mendes, P., Muhleisen, H., and bizer, C. Sieve: Linked data quality assessment and fusion. In LWDM, 2012

[16] Bizer, C. Quality-Driven Information Filtering in the Context of Web-Based Information Systems. PhD thesis, Freie Universität Berlin, 2007

[17] Flemming, A. Quality characteristics of linked data publishing datasources. Master’s thesis, Humboldt-Universität zu Berlin, 2010.

[18] Roumen Trifonov, Radoslav Yoshinov, Some Security Issues of the Governmental Cloud, 15th International Conference on ACE’16, Mallorca, Spain, August 19-21, 2016, ISBN: 978-1-61804-327-6

Cite this paper

Roumen Trifonov, Galya Pavlova. (2017) Methodology for Assessment of Open Data. International Journal of Computers, 2, 28-37

 

cc.png
Copyright © 2017 Author(s) retain the copyright of this article.
This article is published under the terms of the Creative Commons Attribution License 4.0