Modelling Provenance for GDPR Compliance using Linked Open Data Vocabularies

File Type:
PDFItem Type:
Conference PaperDate:
2017Access:
openAccessCitation:
Harshvardhan J Pandit, Dave Lewis, Modelling Provenance for GDPR Compliance using Linked Open Data Vocabularies, 5th Society, Privacy and the Semantic Web - Policy and Technology workshop (PrivOn 2017).co-located with ISWC 2017, Vienna, Austria, 22 Oct 2017, 2017Download Item:

Abstract:
The upcoming General Data Protection Regulation (GDPR)
requires justification of data activities to acquire, use, share, and store
data using consent obtained from the user. Failure to comply may result
in significant heavy fines which incentivises creation and maintenance of
records for all activities involving consent and data. Compliance documentation
therefore requires provenance information outlining consent
and data lifecycles to demonstrate correct usage of data in accordance
with the related consent provided and updated by the user. In this paper,
we present GDPRov, a linked data ontology for expressing provenance of
consent and data lifecycles with a view towards documenting compliance.
GDPRov is an OWL2 ontology that extends PROV-O and P-Plan to
model the provenance, and uses SPARQL to express compliance related
queries
Sponsor
Grant Number
Science Foundation Ireland (SFI)
13/RC/2106
Author's Homepage:
http://people.tcd.ie/delewishttp://people.tcd.ie/pandith
Description:
PUBLISHEDVienna, Austria
Other Titles:
5th Society, Privacy and the Semantic Web - Policy and Technology workshop (PrivOn 2017).co-located with ISWC 2017Type of material:
Conference PaperCollections:
Availability:
Full text availableSubject (TCD):
Digital EngagementLicences: