Structuring Business Process Context Information for Process Monitoring and Prediction

Brunk Jens


Abstract

The advance of Big Data, the Internet of Things (IoT) and with it the integration of various systems - generally referred to as digitalization - provides huge amounts of data that can be leveraged by modern Business Process Management (BPM) methods. Predictive Process Monitoring (PPM) represents a novel branch of process mining, which deals with real-time analysis of currently running process instances and also with the prediction of its future behavior. Most of the early PPM techniques base their analyzes and predictions solely on the control-flow characteristic of a business process, i.e. the process events. Recently, researchers are attempting to incorporate additional process-related information, also known as the process context, into their predictive models. To use the available context information to full capacity, we require an understanding of the concept of business process context information. Based on both empirical and conceptual sources, we develop a taxonomy that provides a comprehensive overview of the characteristics of business process context information. This overview can then be leveraged, e.g. in process monitoring and prediction. Our taxonomy adds descriptive knowledge to the field of BPM, specifically PPM, and strengthens the conceptual foundation of context-sensitive process monitoring and prediction.

Keywords
Taxonomy, Business Process, Context, ContextSensitivity, Predictive Process Monitoring



Publication type
Research article in proceedings (conference)

Peer reviewed
Yes

Publication status
Published

Year
2020

Conference
Conference on Business Informatics 2020

Venue
Antwerpen

Book title
Proceeding. 2020 IEEE 22nd Conference on Business Informatics (CBI 2020). Antwerp, Belgium 22-24 June 2020. Volume 2 – Research-in-Progress and Workshop Papers

Editor
Guédria, Wided; Proper, Henderik A.; Verelst, Jan; Hacks, Simon; Timm, Felix; Sandkuhl, Kurt; Fellmann, Michael; Serapiao, Gabriel; Payan, Mathias; Komarov, Mikhail; Maltseva Svetlana; Uskenbayeva, Raissa; Nazarov, Dmitry; Ge, Mouzhi; Helfert, Markus; Ehrlinger, Lisa

Start page
39

End page
48

Publisher
Wiley-IEEE Computer Society Press

Place
Los Alamitos, California

Language
English

ISSN
2378-1971

ISBN
978-1-7281-9926-9

DOI