Modelling the Provenance of Data in Autonomous Systems
Modelling the Provenance of Data in Autonomous Systems
Determining the provenance of data, i.e. the process that led to that data, is vital in many disciplines. For example, in science, the process that produced a given result must be demonstrably rigorous for the result to be deemed reliable. A provenance system supports applications in recording adequate documentation about process executions to answer queries regarding provenance, and provides functionality to perform those queries. Several provenance systems are being developed, but all focus on systems in which the components are reactive, for example Web Services that act on the basis of a request, job submission system, etc. This limitation means that questions regarding the motives of autonomous actors, or agents, in such systems remain unanswerable in the general case. Such questions include: who was ultimately responsible for a given effect, what was their reason for initiating the process and does the effect of a process match what was intended to occur by those initiating the process? In this paper, we address this limitation by integrating two solutions: a generic, re-usable framework for representing the provenance of data in service-oriented architectures and a model for describing the goal-oriented delegation and engagement of agents in multi-agent systems. Using these solutions, we present algorithms to answer common questions regarding responsibility and success of a process and evaluate the approach with a simulated healthcare example.
1-8
Miles, Simon
76c81b8e-1ca1-4d6d-ace3-922f03df97e0
Munroe, Steve
499e7ff6-0f0d-400e-9a62-4958e95a93e4
Luck, Michael
94f6044f-6353-4730-842a-0334318e6123
Moreau, Luc
033c63dd-3fe9-4040-849f-dfccbe0406f8
2007
Miles, Simon
76c81b8e-1ca1-4d6d-ace3-922f03df97e0
Munroe, Steve
499e7ff6-0f0d-400e-9a62-4958e95a93e4
Luck, Michael
94f6044f-6353-4730-842a-0334318e6123
Moreau, Luc
033c63dd-3fe9-4040-849f-dfccbe0406f8
Miles, Simon, Munroe, Steve, Luck, Michael and Moreau, Luc
(2007)
Modelling the Provenance of Data in Autonomous Systems.
Sixth International Joint Conference on Autonomous Agents and Multiagent Systems (AAMAS-07), Honolulu, Hawaii, United States.
14 - 18 May 2007.
.
Record type:
Conference or Workshop Item
(Paper)
Abstract
Determining the provenance of data, i.e. the process that led to that data, is vital in many disciplines. For example, in science, the process that produced a given result must be demonstrably rigorous for the result to be deemed reliable. A provenance system supports applications in recording adequate documentation about process executions to answer queries regarding provenance, and provides functionality to perform those queries. Several provenance systems are being developed, but all focus on systems in which the components are reactive, for example Web Services that act on the basis of a request, job submission system, etc. This limitation means that questions regarding the motives of autonomous actors, or agents, in such systems remain unanswerable in the general case. Such questions include: who was ultimately responsible for a given effect, what was their reason for initiating the process and does the effect of a process match what was intended to occur by those initiating the process? In this paper, we address this limitation by integrating two solutions: a generic, re-usable framework for representing the provenance of data in service-oriented architectures and a model for describing the goal-oriented delegation and engagement of agents in multi-agent systems. Using these solutions, we present algorithms to answer common questions regarding responsibility and success of a process and evaluate the approach with a simulated healthcare example.
Text
aamas07.pdf
- Accepted Manuscript
More information
Published date: 2007
Venue - Dates:
Sixth International Joint Conference on Autonomous Agents and Multiagent Systems (AAMAS-07), Honolulu, Hawaii, United States, 2007-05-14 - 2007-05-18
Organisations:
Web & Internet Science
Identifiers
Local EPrints ID: 271191
URI: http://eprints.soton.ac.uk/id/eprint/271191
PURE UUID: e18c6d2a-0261-4d3f-b989-23e26f43714f
Catalogue record
Date deposited: 27 May 2010 10:52
Last modified: 14 Mar 2024 09:25
Export record
Contributors
Author:
Simon Miles
Author:
Steve Munroe
Author:
Michael Luck
Author:
Luc Moreau
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics