Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

DBGL: Decay-aware Bipartite Graph Learning for Irregular Medical Time Series Classification

About

Irregular Medical Time Series play a critical role in the clinical domain to better understand the patient's condition. However, inherent irregularity arising from heterogeneous sampling rates, asynchronous observations, and variable gaps poses key challenges for reliable modeling. Existing methods often distort temporal sampling irregularity and missingness patterns while failing to capture variable decay irregularity, resulting in suboptimal representations. To address these limitations, we introduce DBGL, Decay-Aware Bipartite Graph Learning for Irregular Medical Time Series. DBGL first introduces a patient-variable bipartite graph that simultaneously captures irregular sampling patterns without artificial alignment and adaptively models variable relationships for temporal sampling irregularity modeling, enhancing representation learning. To model variable decay irregularity, DBGL designs a novel node-specific temporal decay encoding mechanism that captures each variable's decay rates based on sampling interval, yielding a more accurate and faithful representation of irregular temporal dynamics. We evaluate the performance of DBGL on four publicly available datasets, and the results show that DBGL outperforms all baselines.

Jian Chen, Yuzhu Hu, Xiaoyan Yuan, Yuxuan Hu, Jinfeng Xu, Yipeng Du, Wenhao Yuan, Wei Wang, Edith C. H. Ngai• 2026

Related benchmarks

TaskDatasetResultRank
Irregular Time Series ClassificationMIMIC-III
AUC-ROC0.852
20
Irregular Time Series ClassificationPhysioNet
AUC-ROC0.891
20
Irregular Medical Time Series ClassificationP19
AUROC0.933
18
Irregular Medical Time Series ClassificationP12
AUROC88.1
18
Irregular Medical Time Series ClassificationPAM
Accuracy90.4
12
Showing 5 of 5 rows

Other info

Follow for update