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A Provenance Task Abstraction Framework
Author(s) -
Christian Bors,
John Wenskovitch,
Michelle Dowling,
Simon Attfield,
Leilani Battle,
Alex Endert,
Olga Kulyk,
Robert S. Laramee
Publication year - 2019
Publication title -
ieee computer graphics and applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.349
H-Index - 92
eISSN - 1558-1756
pISSN - 0272-1716
DOI - 10.1109/mcg.2019.2945720
Subject(s) - computer science , abstraction , hierarchy , context (archaeology) , task (project management) , provenance , visual analytics , data science , human–computer interaction , software engineering , data mining , visualization , systems engineering , petrology , paleontology , philosophy , epistemology , economics , engineering , market economy , biology , geology
Visual analytics tools integrate provenance recording to externalize analytic processes or user insights. Provenance can be captured on varying levels of detail, and in turn activities can be characterized from different granularities. However, current approaches do not support inferring activities that can only be characterized across multiple levels of provenance. We propose a task abstraction framework that consists of a three stage approach, composed of 1) initializing a provenance task hierarchy, 2) parsing the provenance hierarchy by using an abstraction mapping mechanism, and 3) leveraging the task hierarchy in an analytical tool. Furthermore, we identify implications to accommodate iterative refinement, context, variability, and uncertainty during all stages of the framework. We describe a use case which exemplifies our abstraction framework, demonstrating how context can influence the provenance hierarchy to support analysis. The article concludes with an agenda, raising and discussing challenges that need to be considered for successfully implementing such a framework.

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