Title of article :
Investigation of the Eect of Concept Drift on Data-Aware Remaining Time Prediction of Business Processes
Author/Authors :
Firouzian, Iman Faculty of Computer Engineering and IT - Shahrood University of Technology, Shahrood, Iran , Zahedi, Morteza Faculty of Computer Engineering and IT - Shahrood University of Technology, Shahrood, Iran , Hassanpour, Hamid Faculty of Computer Engineering and IT - Shahrood University of Technology, Shahrood, Iran
Abstract :
Process Mining is a rather new research area in artificial intelligence with handles event logs usually
recorded by information systems. Although, remaining time prediction of ongoing business instances
has been always a research question in this area, most of the existing literature does not take into
account dynamicity of environment and the underlying process commonly known as concept drift.
In this paper, a two-phase approach is presented to predict the remaining time of ongoing process
instances; in the first phase, future path of process instances is predicted using an annotated transition
system with Fuzzy Support Vector Machine probabilities based on case data and in the second phase,
the remaining time is predicted by summing up the duration of future activities each estimated by
Support Vector Regressor. Finally, a concept drift adaptation method is proposed. To benchmark the
proposed prediction method along with the proposed concept drift adaptation method, experiments
are conducted using a real-world event log and a simulation event log. The results show that the
proposed approach gained 13% improvement on remaining time prediction in case of concept drift.
Keywords :
Concept Drift , Remaining Time Prediction , Process Mining , Business Process