Process Intelligence

  • Marlon Dumas
  • Marcello La Rosa
  • Jan Mendling
  • Hajo A. Reijers

Abstract

It is a central idea of BPM that processes are explicitly defined, then executed, and that information about process execution is prepared and analyzed. In this way, this information provides a feedback loop on how the process might be redesigned. Data about the execution of processes can stem from BPMSs in which processes are specified, but also from systems that do not work with an explicit process model, for instance ERP systems or ticketing systems. Data from those systems have to be transformed to meet the requirements of intelligent process execution analysis. This field is typically referred to as process mining.

This chapter deals with intelligently using the data generated from the execution of the process. We refer to such data as event logs, covering what has been done when by whom in relation to which process instance. First, we investigate the structure of event logs, their relationship to process models, and their usefulness for process monitoring and controlling. Afterwards, we discuss three major objectives of intelligent process analysis, namely transparency, performance and conformance. We discuss automatic process discovery as a technical step to achieve transparency of how the process is executed in reality. Then, we study how the analysis of event logs can provide insights into process performance. Finally, we discuss how the conformance between event logs and a process model can be checked.

Keywords

Process Instance Work Item Start Event Conformance Check Potential Parallelism 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

References

  1. 4.
    R. Anupindi, S. Chopra, S.D. Deshmukh, J.A. van Mieghem, E. Zemel, Managing Business Process Flows (Prentice Hall, New York, 1999) Google Scholar
  2. 13.
    J. De Weerdt, M. De Backer, J. Vanthienen, B. Baesens, A multi-dimensional quality assessment of state-of-the-art process discovery algorithms using real-life event logs. Inf. Syst. 37(7), 654–676 (2012) CrossRefGoogle Scholar
  3. 22.
    S. Goedertier, J. De Weerdt, D. Martens, J. Vanthienen, B. Baesens, Process discovery in event logs: an application in the telecom industry. Appl. Soft Comput. 11(2), 1697–1710 (2011) CrossRefGoogle Scholar
  4. 25.
    C. Günther, Process mining in flexible environments. PhD thesis, Technische Universiteit Eindhoven (2009) Google Scholar
  5. 32.
    P. Harmon, Analyzing activities. BPTrends Newsletter 1(4), April 2003. http://www.bptrends.com
  6. 33.
    D. Heckl, J. Moormann, Process performance management, in Handbook on Business Process Management 2 (Springer, Berlin, 2010), pp. 115–135 CrossRefGoogle Scholar
  7. 37.
    IEEE TaskForce on Process Mining. Process mining manifesto. http://www.win.tue.nl/ieeetfpm/doku.php?id=shared:process_mining_manifesto. Accessed: November 2012
  8. 90.
    M. Strembeck, J. Mendling, Modeling process-related rbac models with extended uml activity models. Inf. Softw. Technol. 53(5), 456–483 (2011) CrossRefGoogle Scholar
  9. 94.
    W.M.P. van der Aalst, Process Mining—Discovery, Conformance and Enhancement of Business Processes (Springer, Berlin, 2011) MATHGoogle Scholar
  10. 97.
    W.M.P. van der Aalst, H.A. Reijers, A.J.M.M. Weijters, B.F. van Dongen, A.K. Alves de Medeiros, M. Song, H.M.W.(E.) Verbeek, Business process mining: an industrial application. Inf. Syst. 32(5), 713–732 (2007) CrossRefGoogle Scholar
  11. 102.
    J. vom Brocke, M. Rosemann, Handbook on Business Process Management 1: Introduction, Methods, and Information Systems, vol. 1 (Springer, Berlin, 2010) Google Scholar
  12. 103.
    J. vom Brocke, M. Rosemann, Handbook on Business Process Management 2: Strategic Alignment, Governance, People and Culture, vol. 2 (Springer, Berlin, 2010) CrossRefGoogle Scholar
  13. 104.
    M. Weidlich, A. Polyvyanyy, N. Desai, J. Mendling, M. Weske, Process compliance analysis based on behavioural profiles. Inf. Syst. 36(7), 1009–1025 (2011) CrossRefGoogle Scholar
  14. 105.
    M. Weidlich, H. Ziekow, J. Mendling, O. Günther, M. Weske, N. Desai, Event-based monitoring of process execution violations, in Business Process Management—9th International Conference, BPM 2011, Proceedings, Clermont-Ferrand, France, August 30–September 2, 2011, ed. by S. Rinderle-Ma, F. Toumani, K. Wolf. Lecture Notes in Computer Science, vol. 6896 (Springer, Berlin, 2011), pp. 182–198 Google Scholar
  15. 110.
    M. zur Muehlen, Workflow-Based Process Controlling. Foundation, Design, and Implementation of Workflow-Driven Process Information Systems. Advances in Information Systems and Management Science, vol. 6 (Logos, Berlin, 2004) Google Scholar
  16. 111.
    M. zur Muehlen, R. Shapiro, Business process analytics, in Handbook on Business Process Management 2 (2010), pp. 137–157 CrossRefGoogle Scholar

Copyright information

© Springer-Verlag Berlin Heidelberg 2013

Authors and Affiliations

  • Marlon Dumas
    • 1
  • Marcello La Rosa
    • 2
  • Jan Mendling
    • 3
  • Hajo A. Reijers
    • 4
  1. 1.Institute of Computer ScienceUniversity of TartuTartuEstonia
  2. 2.Queensland University of Technology and NICTABrisbaneAustralia
  3. 3.Institute for Information BusinessVienna University of Economics and BusinessViennaAustria
  4. 4.Department of Mathematics and Computer ScienceEindhoven University of TechnologyEindhovenThe Netherlands

Personalised recommendations