Exploring the Effect of Context Information on Deep Learning Business Process Predictions

Brunk Jens, Stottmeister Johannes, Weinzierl Sven, Matzner Martin, Becker Jörg


Abstract

Predictive Process Monitoring (PPM) techniques for predicting the next activity in running business processes developed into an established topic of Business Process Management. Recent research suggests using Deep Neural Networks (DNNs) for PPM because DNNs are good at learning the intricate structure of business processes. Most of these works use Long Short-Term Memory Neural Networks (LSTMs) and consider only the control flow information of an event log. Beyond control flow information, context information can add valuable information to a predictive model. However, the effects of context attributes on the predictive quality have not yet been sufficiently analyzed. This work addresses this gap and provides two insights. First, a context-sensitive prediction capability can improve the predictive quality of an LSTM-based technique. Second, the added value of context information to the quality of predicting the next activity varies in the course of a running process instance.

Keywords
Predictive process monitoring; deep learning; context-sensitivity



Publication type
Research article (journal)

Peer reviewed
Yes

Publication status
Published

Year
2020

Journal
Journal of Decision Systems

Volume
29

Issue
sup1

Start page
328

End page
343

Language
English

ISSN
1246-0125

DOI