EHHN is a heterogeneous hypergraph network with dual micro-spatial and macro-evolution streams that achieves top accuracy and F1 on four OCEL benchmarks while cutting GPU memory use by up to 24x versus graph baselines.
An Innovative Next Activity Prediction Using Process Entropy and Dynamic Attribute-Wise-Transformer in Predictive Business Process Monitoring
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abstract
Next activity prediction in predictive business process monitoring is crucial for operational efficiency and informed decision-making. While machine learning and Artificial Intelligence have achieved promising results, challenges remain in balancing interpretability and accuracy, particularly due to the complexity and evolving nature of event logs. This paper presents two contributions: (i) an entropy-based model selection framework that quantifies dataset complexity to recommend suitable algorithms, and (ii) the DAW-Transformer (Dynamic Attribute-Wise Transformer), which integrates multi-head attention with a dynamic windowing mechanism to capture long-range dependencies across all attributes. Experiments on six public event logs show that the DAW-Transformer achieves superior performance on high-entropy datasets (e.g., Sepsis, Filtered Hospital Logs), whereas interpretable methods like Decision Trees perform competitively on low-entropy datasets (e.g., BPIC 2020 Prepaid Travel Costs). These results highlight the importance of aligning model choice with dataset entropy to balance accuracy and interpretability.
fields
cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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EHHN: An Event-driven Heterogeneous Hypergraph Network for Object-Centric Next Activity Prediction
EHHN is a heterogeneous hypergraph network with dual micro-spatial and macro-evolution streams that achieves top accuracy and F1 on four OCEL benchmarks while cutting GPU memory use by up to 24x versus graph baselines.