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Modeling Patient Care Trajectories with Transformer Hawkes Processes

About

Patient healthcare utilization consists of irregularly time-stamped events, such as outpatient visits, inpatient admissions, and emergency encounters, forming individualized care trajectories. Modeling these trajectories is crucial for understanding utilization patterns and predicting future care needs, but is challenging due to temporal irregularity and severe class imbalance. In this work, we build on the Transformer Hawkes Process framework to model patient trajectories in continuous time. By combining Transformer-based history encoding with Hawkes process dynamics, the model captures event dependencies and jointly predicts event type and time-to-event. To address extreme imbalance, we introduce an imbalance-aware training strategy using inverse square-root class weighting. This improves sensitivity to rare but clinically important events without altering the data distribution. Experiments on real-world data demonstrate improved performance and provide clinically meaningful insights for identifying high-risk patient populations.

Saumya Pandey, Varun Chandola• 2026

Related benchmarks

TaskDatasetResultRank
Event Type PredictionPC-TCM Healthcare Utilization EHR Dataset
Macro F1 Score48
3
Time-to-event predictionPC-TCM Healthcare Utilization EHR Dataset
MedAE (days)13
3
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