RESEARCH28
DBGL: Decay-aware Bipartite Graph Learning for Irregular Medical Time Series Classification
arXiv CS.LGΒ·April 15, 2026
DBGL introduces a novel Decay-Aware Bipartite Graph Learning method to address the challenges of irregular medical time series classification. It utilizes a patient-variable bipartite graph to model irregular sampling patterns and variable relationships, alongside a node-specific temporal decay encoding for variable decay irregularity.
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