Mining Based on Learning from Process Change Logs

In today’s dynamic business world economic success of an enterprise increasingly depends on its ability to react to internal and external changes in a quick and flexible way. In response to this need, process-aware information systems (PAIS) emerged, which support the modeling, orchestration and monitoring of business processes. Recently, a new generation of flexible PAIS was introduced, which additionally allows for dynamic process changes. This, in turn, leads to a large number of process variants, which are created from the same original model, but might slightly differ from each other. This paper deals with issues related to the mining of such process variant collections. Our overall goal is to learn from process changes and to merge the resulting model variants into a generic process model in the best possible way. By adopting this generic process model in the PAIS, future costs of process change and need for process adaptations will decrease. We compare process variant mining with conventional process mining techniques, and show that it is additionally needed to learn from process changes.

[1]  Wil M. P. van der Aalst,et al.  Workflow mining: discovering process models from event logs , 2004, IEEE Transactions on Knowledge and Data Engineering.

[2]  Stefanie Rinderle-Ma,et al.  On Deriving Net Change Information From Change Logs - The DELTALAYER-Algorithm , 2007, BTW.

[3]  Boudewijn F. van Dongen,et al.  Process Mining Based on Clustering: A Quest for Precision , 2007, Business Process Management Workshops.

[4]  Andreas Wombacher,et al.  Evaluation of Workflow Similarity Measures in Service Discovery , 2006, Service Oriented Electronic Commerce.

[5]  Christian S. Jensen,et al.  Capturing Temporal Constraints in Temporal ER Models , 2008, ER.

[6]  Guido Governatori,et al.  Compliance aware business process design , 2008 .

[7]  Manfred Reichert,et al.  Discovering Reference Process Models by Mining Process Variants , 2008, 2008 IEEE International Conference on Web Services.

[8]  Manfred Reichert,et al.  Adeptflex—Supporting Dynamic Changes of Workflows Without Losing Control , 1998, Journal of Intelligent Information Systems.

[9]  Wil M.P. van der Aalst,et al.  Genetic Process Mining , 2005, ICATPN.

[10]  Stefanie Rinderle-Ma,et al.  Change Patterns and Change Support Features in Process-Aware Information Systems , 2007, Seminal Contributions to Information Systems Engineering.

[11]  Manfred Reichert,et al.  Managing Process Variants in the Process Life Cycle , 2007, ICEIS.

[12]  Wil M. P. van der Aalst,et al.  Inheritance of workflows: an approach to tackling problems related to change , 2002 .

[13]  Jianmin Wang,et al.  Detecting Implicit Dependencies Between Tasks from Event Logs , 2006, APWeb.

[14]  Yanchun Zhang,et al.  Frontiers of WWW Research and Development - APWeb 2006, 8th Asia-Pacific Web Conference, Harbin, China, January 16-18, 2006, Proceedings , 2006, APWeb.

[15]  Ling Liu,et al.  Process Mining, Discovery, and Integration using Distance Measures , 2006, 2006 IEEE International Conference on Web Services (ICWS'06).

[16]  Manfred Reichert,et al.  On Measuring Process Model Similarity Based on High-Level Change Operations , 2007, ER.

[17]  Zahir Tari,et al.  On the Move to Meaningful Internet Systems 2006: CoopIS, DOA, GADA, and ODBASE, OTM Confederated International Conferences, CoopIS, DOA, GADA, and ODBASE 2006, Montpellier, France, October 29 - November 3, 2006. Proceedings, Part I , 2006, OTM Conferences.

[18]  Wil M. P. van der Aalst,et al.  Rediscovering workflow models from event-based data using little thumb , 2003, Integr. Comput. Aided Eng..

[19]  Kenneth H. Rosen,et al.  Discrete Mathematics and its applications , 2000 .

[20]  Wil M. P. van der Aalst,et al.  Change Mining in Adaptive Process Management Systems , 2006, OTM Conferences.