Process model forecasting and change exploration using time series analysis of event sequence data

Johannes De Smedt*, Anton Yeshchenko, Artem Polyvyanyy, Jochen De Weerdt, Jan Mendling

*Corresponding author for this work

Publication: Scientific journalJournal articlepeer-review

Abstract

Process analytics is a collection of data-driven techniques for, among others, making predictions for individual process instances or overall process models. At the instance level, various novel techniques have been recently devised, tackling analytical tasks such as next activity, remaining time, or outcome prediction. However, there is a notable void regarding predictions at the process model level. It is the ambition of this article to fill this gap. More specifically, we develop a technique to forecast the entire process model from historical event data. A forecasted model is a will-be process model representing a probable description of the overall process for a given period in the future. Such a forecast helps, for instance, to anticipate and prepare for the consequences of upcoming process drifts and emerging bottlenecks. Our technique builds on a representation of event data as multiple time series, each capturing the evolution of a behavioural aspect of the process model, such that corresponding time series forecasting techniques can be applied. Our implementation demonstrates the feasibility of process model forecasting using real-world event data. A user study using our Process Change Exploration tool confirms the usefulness and ease of use of the produced process model forecasts.

Original languageEnglish
Article number102145
JournalData and Knowledge Engineering
Volume145
DOIs
Publication statusPublished - May 2023

Bibliographical note

Publisher Copyright:
© 2023 The Author(s)

Keywords

  • Predictive process modelling
  • Process mining
  • Process model forecasting
  • Time series analysis
  • User study

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