Authors
Wolfgang Kratsch, Jonas Manderscheid, Maximilian Röglinger, Johannes Seyfried
Publication date
2021/6
Journal
Business & Information Systems Engineering
Volume
63
Pages
261-276
Publisher
Springer Fachmedien Wiesbaden
Description
Predictive process monitoring aims at forecasting the behavior, performance, and outcomes of business processes at runtime. It helps identify problems before they occur and re-allocate resources before they are wasted. Although deep learning (DL) has yielded breakthroughs, most existing approaches build on classical machine learning (ML) techniques, particularly when it comes to outcome-oriented predictive process monitoring. This circumstance reflects a lack of understanding about which event log properties facilitate the use of DL techniques. To address this gap, the authors compared the performance of DL (i.e., simple feedforward deep neural networks and long short term memory networks) and ML techniques (i.e., random forests and support vector machines) based on five publicly available event logs. It could be observed that DL generally outperforms classical ML techniques. Moreover, three …
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