Literature by the same author
plus at Google Scholar

Bibliografische Daten exportieren
 

Model-Agnostic Event Log Augmentation for Predictive Process Monitoring

Title data

Käppel, Martin ; Jablonski, Stefan:
Model-Agnostic Event Log Augmentation for Predictive Process Monitoring.
In: Indulska, Marta ; Reinhartz-Berger, Iris ; Cetina, Carlos ; Pastor, Oscar (ed.): Advanced Information Systems Engineering : proceedings. - Cham : Springer , 2023 . - pp. 381-397 . - (Lecture Notes in Computer Science ; 13901 )
ISBN 978-3-031-34560-9
DOI: https://doi.org/10.1007/978-3-031-34560-9_23

Official URL: Volltext

Project information

Project title:
Project's official title
Project's id
InfoFormulizer
AZ-1390-19

Project financing: Bayerische Forschungsstiftung

Abstract in another language

Predictive process monitoring aims to predict how the execution of a running process instance will evolve until its completion. Deep learning techniques have been shown to perform well for various prediction tasks, such as next activity prediction, remaining time prediction, or outcome prediction. However, the quality and performance of these models is highly dependent on the available amount of training data, as deep learning models require a lot of data to generalize well. In practice, the available event logs usually contain only a few thousand records with more or less redundancy, which is insufficient with respect to the large number of parameters that need to be estimated during training. For this reason, data augmentation is often used in machine learning research to increase the amount of available training data by applying transformations to them and create new samples synthetically. Since data augmentation is still largely unexplored in predictive process monitoring, this paper proposes an initial set of simple noise-based transformations that could be applied to any event log and boosts the performance of existing predictive process monitoring approaches. Our experimental evaluation shows that predictive process monitoring approaches for predicting the next activity benefit from this data augmentation technique in terms of performance and stability of the training process.

Further data

Item Type: Article in a book
Refereed: Yes
Keywords: Predictive Process Monitoring; Data Augmentation; Data Scarcity
Institutions of the University: Faculties > Faculty of Mathematics, Physics und Computer Science
Faculties > Faculty of Mathematics, Physics und Computer Science > Department of Computer Science
Faculties > Faculty of Mathematics, Physics und Computer Science > Department of Computer Science > Chair Applied Computer Science IV
Faculties > Faculty of Mathematics, Physics und Computer Science > Department of Computer Science > Chair Applied Computer Science IV > Chair Applied Computer Science IV - Univ.-Prof. Dr.-Ing. Stefan Jablonski
Faculties
Result of work at the UBT: Yes
DDC Subjects: 000 Computer Science, information, general works > 004 Computer science
Date Deposited: 18 Jul 2023 07:12
Last Modified: 09 Aug 2023 10:42
URI: https://eref.uni-bayreuth.de/id/eprint/86140