Predictive Process Model Monitoring using Recurrent Neural Networks
Johannes De Smedt, Jochen De Weerdt

TL;DR
This paper introduces a novel approach called Processes-As-Movies (PAM) that uses recurrent neural networks to predict and monitor process models by capturing detailed activity constraints over time, bridging predictive monitoring and process forecasting.
Contribution
The paper proposes PAM, a new technique that models process constraints with RNNs to improve predictive process model monitoring and forecasting capabilities.
Findings
RNN topologies achieve high predictive accuracy.
PAM effectively captures process constraints over time.
Models outperform traditional methods in real-life logs.
Abstract
The field of predictive process monitoring focuses on case-level models to predict a single specific outcome such as a particular objective, (remaining) time, or next activity/remaining sequence. Recently, a longer-horizon, model-wide approach has been proposed in the form of process model forecasting, which predicts the future state of a whole process model through the forecasting of all activity-to-activity relations at once using time series forecasting. This paper introduces the concept of \emph{predictive process model monitoring} which sits in the middle of both predictive process monitoring and process model forecasting. Concretely, by modelling a process model as a set of constraints being present between activities over time, we can capture more detailed information between activities compared to process model forecasting, while being compatible with typical predictive…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Software System Performance and Reliability · Advanced Data Processing Techniques
