Abstracting Granular Provenance

No Thumbnail Available
Authors
Lebo, Tim
Wang, Ping
Graves, Alvaro
McGuinness, Deborah L.
Issue Date
2012-04-18
Type
Language
Keywords
Inference Web
Research Projects
Organizational Units
Journal Issue
Alternative Title
Abstract
As Open Data becomes commonplace, methods are needed to integrate dis- parate data from a variety of sources. Although Linked Data design has promise for integrating world wide data, integrators often struggle to provide appropriate transparency for their sources and transformations. Without this transparency, cautious consumers are unlikely to find enough information to allow them to trust third party results. While capturing provenance in RPI’s Linking Open Government Data project, we were faced with the common problem that only a portion of provenance that is captured is effectively used. Using our water quality portal’s use case as an example, we argue that one key to enabling provenance use is a better treatment of provenance granularity. To address this challenge, we have designed an approach that supports deriving abstracted provenance from granular provenance in an open environment. We describe the approach, show how it addresses the naturally occurring unmet provenance needs in a fam- ily of applications, and describe how the approach addresses similar problems in open provenance and open data environments.
Description
Full Citation
Publisher
Terms of Use
Journal
Volume
Issue
PubMed ID
DOI
ISSN
EISSN