A hybrid transformer combining ECG morphology and HRV features with MMD domain adaptation achieves 95% F1-macro on unseen wearable data for arrhythmia classification.
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Domain-Adaptive Arrhythmia Classification Using a Hybrid Transformer on Wearable Heart Signals
A hybrid transformer combining ECG morphology and HRV features with MMD domain adaptation achieves 95% F1-macro on unseen wearable data for arrhythmia classification.