Predictive Object-Centric Process Monitoring
Timo Rohrer, Anahita Farhang Ghahfarokhi, Mohamed Behery, Gerhard, Lakemeyer, Wil M.P. van der Aalst

TL;DR
This paper introduces a novel predictive approach for object-centric process monitoring using advanced neural network models, effectively handling complex multi-object data with rich attributes, and provides a practical web interface for predictions.
Contribution
It extends predictive process monitoring to object-centric event logs with GAN, LSTM, and Seq2seq models, incorporating object attributes for improved accuracy.
Findings
Matches or exceeds previous methods in sequence similarity and MAE metrics.
Effectively utilizes object attributes like priority for better predictions.
Provides a user-friendly web interface for process prediction.
Abstract
The automation and digitalization of business processes has resulted in large amounts of data captured in information systems, which can aid businesses in understanding their processes better, improve workflows, or provide operational support. By making predictions about ongoing processes, bottlenecks can be identified and resources reallocated, as well as insights gained into the state of a process instance (case). Traditionally, data is extracted from systems in the form of an event log with a single identifying case notion, such as an order id for an Order to Cash (O2C) process. However, real processes often have multiple object types, for example, order, item, and package, so a format that forces the use of a single case notion does not reflect the underlying relations in the data. The Object-Centric Event Log (OCEL) format was introduced to correctly capture this information. The…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Advanced Data Processing Techniques · Simulation Techniques and Applications
