LGAIAug 24, 2025

TANDEM: Temporal Attention-guided Neural Differential Equations for Missingness in Time Series Classification

arXiv:2508.17519v1h-index: 7CIKM
Originality Highly original
AI Analysis

This addresses the challenge of missing data in time series classification for domains like healthcare, offering a practical tool with improved accuracy.

The paper tackled the problem of handling missing data in time series classification by proposing TANDEM, an attention-guided neural differential equation framework, which demonstrated superiority over state-of-the-art methods on 30 benchmark datasets and a real-world medical dataset.

Handling missing data in time series classification remains a significant challenge in various domains. Traditional methods often rely on imputation, which may introduce bias or fail to capture the underlying temporal dynamics. In this paper, we propose TANDEM (Temporal Attention-guided Neural Differential Equations for Missingness), an attention-guided neural differential equation framework that effectively classifies time series data with missing values. Our approach integrates raw observation, interpolated control path, and continuous latent dynamics through a novel attention mechanism, allowing the model to focus on the most informative aspects of the data. We evaluate TANDEM on 30 benchmark datasets and a real-world medical dataset, demonstrating its superiority over existing state-of-the-art methods. Our framework not only improves classification accuracy but also provides insights into the handling of missing data, making it a valuable tool in practice.

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