Geetika T. Lakshmanan, Ying Li, et al.
DEBS 2010
In semi-structured processes, the set of activities that need to be performed, their order and whether additional steps are required are determined by human judgment. There is a growing demand for operational support of such processes during runtime particularly in the form of predictions about the likelihood of future tasks. We address the problem of making predictions for a running instance of a semi-structured process that contains parallel execution paths where the execution path taken by a process instance influences its outcome. In particular, we consider five different models for how to represent an execution trace as a path attribute for training a prediction model. We provide a methodology to determine whether parallel paths are independent, and whether it is worthwhile to model execution paths as independent based on a comparison of the information gain obtained by dependent and independent path representations. We tested our methodology by simulating a marketing campaign as a business process model and selected decision trees as the prediction model. In the evaluation, we compare the complexity and prediction accuracy of a prediction model trained with five different models.
Geetika T. Lakshmanan, Ying Li, et al.
DEBS 2010
Yurdaer N. Doganata
ICDE 2011
Merve Unuvar, Yurdaer N. Doganata, et al.
CNSM 2014
Merve Unuvar, Stefania Tosi, et al.
IEEE-TSC