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ChronoFormer: Time-Aware Transformer Architectures for Structured Clinical Event Modeling

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The temporal complexity of electronic health record (EHR) data presents significant challenges for predicting clinical outcomes using machine learning. This paper proposes ChronoFormer, an innovative transformer based architecture specifically designed to encode and leverage temporal dependencies in longitudinal patient data. ChronoFormer integrates temporal embeddings, hierarchical attention mechanisms, and domain specific masking techniques. Extensive experiments conducted on three benchmark tasks mortality prediction, readmission prediction, and long term comorbidity onset demonstrate substantial improvements over current state of the art methods. Furthermore, detailed analyses of attention patterns underscore ChronoFormer's capability to capture clinically meaningful long range temporal relationships.

Yuanyun Zhang, Shi Li• 2025

Related benchmarks

TaskDatasetResultRank
Intrusion DetectionMQTT-IoT-IDS 2020
Accuracy (A)96.82
11
Intrusion DetectionCICIoT WEB 23
Accuracy83.19
11
Intrusion DetectionIoTID20
Accuracy A75.94
11
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