Title :
Personalised Provenance Reasoning Models and Risk Assessment in Business Systems: A Case Study
Author :
Townend, Paul ; Webster, David ; Venters, C.C. ; Dimitrova, V. ; Djemame, K. ; Lau, L. ; Jie Xu ; Fores, S. ; Viduto, V. ; Dibsdale, C. ; Taylor, Nathaniel ; Austin, J. ; Mcavoy, J. ; Hobson, S.
Author_Institution :
Univ. of Leeds, Leeds, UK
Abstract :
As modern information systems become increasingly business- and safety-critical, it is extremely important to improve both the trust that a user places in a system and their understanding of the risks associated with making a decision. This paper presents the STRAPP framework, a generic framework that supports both of these goals through the use of personalised provenance reasoning engines and state-of-art risk assessment techniques. We present the high-level architecture of the framework, and describe the process of systematically modelling system provenance with the W3C PROV provenance data model. We discuss the business drivers behind the concept of personalizing provenance information, and describe an approach to enabling this through a user-adaptive system style. We discuss using data provenance for risk management and treatment in order to evaluate risk levels, and discuss the use of CORAS to develop a risk reasoning engine representing core classes and relationships. Finally, we demonstrate the initial implementation of our personalised provenance system in the context of the Rolls-Royce Equipment Health Management, and discuss its operation, the lessons we have learnt through our research and implementation (both technical and in business), and our future plans for this project.
Keywords :
business data processing; data analysis; data models; decision making; inference mechanisms; risk management; CORAS; Rolls-Royce Equipment Health Management; STRAPP framework; W3C PROV provenance data model; business driver; business system; business-critical information system; core class; data provenance; decision making; high-level architecture; personalised provenance reasoning engine; personalised provenance reasoning model; provenance information personalization; risk assessment technique; risk level evaluation; risk reasoning engine; safety-critical information system; user-adaptive system style; Adaptation models; Cognition; Context; Context modeling; Data models; Engines; Risk management; provenance; risk; trust; web services;
Conference_Titel :
Service Oriented System Engineering (SOSE), 2013 IEEE 7th International Symposium on
Conference_Location :
Redwood City
Print_ISBN :
978-1-4673-5659-6
DOI :
10.1109/SOSE.2013.53