The need for interpretation of provenance data increases with the introduction of further provenance related IT-systems. The interpretation of data only becomes intuitively with providing good and efficient visualization possibilities. During the development of general provenance visualization techniques, provenance users are classified into groups regarding their view to provenance information. The end-user requirements are evaluated on an abstract level to have a basis for research. Different intentions of end-users regarding provenance are identified and put into relationship with standard visualization types. Examples for standard visualization types are given and a brief forecast to future achievements is made.
[1]
Andreas Schreiber.
The integrated simulation environment TENT
,
2002,
Concurr. Comput. Pract. Exp..
[2]
Ben Fry.
Visualizing Data
,
2007
.
[3]
Simon Miles.
Electronically Querying for the Provenance of Entities
,
2006,
IPAW.
[4]
Paul T. Groth,et al.
An Architecture for Provenance Systems
,
2006
.
[5]
Cláudio T. Silva,et al.
Managing Rapidly-Evolving Scientific Workflows
,
2006,
IPAW.
[6]
Andreas Schreiber,et al.
Provenance Implementation in a Scientific Simulation Environment
,
2006,
IPAW.