JOURNAL ARTICLE

Predictive Business Process Monitoring with LSTM Neural Networks

Niek TaxIlya VerenichMarcello La RosaMarlon Dumas

Year: 2016 Journal:   Munich Personal RePEc Archive (Ludwig Maximilian University of Munich) Vol: 10253   Publisher: Ludwig-Maximilians-Universität München

Abstract

Predictive business process monitoring methods exploit logs of completed cases of a process in order to make predictions about running cases thereof. Existing methods in this space are tailor-made for specific prediction tasks. Moreover, their relative accuracy is highly sensitive to the dataset at hand, thus requiring users to engage in trial-and-error and tuning when applying them in a specific setting. This paper investigates Long Short-Term Memory (LSTM) neural networks as an approach to build consistently accurate models for a wide range of predictive process monitoring tasks. First, we show that LSTMs outperform existing techniques to predict the next event of a running case and its timestamp. Next, we show how to use models for predicting the next task in order to predict the full continuation of a running case. Finally, we apply the same approach to predict the remaining time, and show that this approach outperforms existing tailor-made methods.

Keywords:
Computer science Timestamp Process (computing) Task (project management) Machine learning Artificial neural network Exploit Artificial intelligence Recurrent neural network Event (particle physics) Business process Range (aeronautics) Data mining Real-time computing Work in process

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Topics

Business Process Modeling and Analysis
Social Sciences →  Business, Management and Accounting →  Management Information Systems
Software System Performance and Reliability
Physical Sciences →  Computer Science →  Computer Networks and Communications
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