The present paper explores the opportunity of applying reinforcement learning to various typical tasks in the field of predictive process monitoring. The tasks considered are the prediction of both nextevent activity and time completion as well as the prediction of the whole progression of running cases. Experiments have been conducted on the popular benchmark dataset, BPI’ 2012, on which we compare the pro-posed learning system with state of the art methods adopting LSTM networks trained through supervised learning. Results enlighten promising features of the approach and interesting research issues and challenges, as well as proving the applicability of reinforcement learning to predictive process monitoring.

A Preliminary Study on the Application of Reinforcement Learning for Predictive Process Monitoring / Chiorrini, A.; Diamantini, C.; Mircoli, A.; Potena, D.. - (2021). [10.1007/978-3-030-72693-5_10]

A Preliminary Study on the Application of Reinforcement Learning for Predictive Process Monitoring

Chiorrini A.;Diamantini C.;Mircoli A.;Potena D.
2021-01-01

Abstract

The present paper explores the opportunity of applying reinforcement learning to various typical tasks in the field of predictive process monitoring. The tasks considered are the prediction of both nextevent activity and time completion as well as the prediction of the whole progression of running cases. Experiments have been conducted on the popular benchmark dataset, BPI’ 2012, on which we compare the pro-posed learning system with state of the art methods adopting LSTM networks trained through supervised learning. Results enlighten promising features of the approach and interesting research issues and challenges, as well as proving the applicability of reinforcement learning to predictive process monitoring.
2021
Proceedings of 2nd International Conference on Process Mining
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/284726
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