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HyperIMTS: Hypergraph Neural Network for Irregular Multivariate Time Series Forecasting

23 May 2025
Boyuan Li
Yicheng Luo
Zhen Liu
Junhao Zheng
Jianming Lv
Qianli Ma
    AI4TS
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Abstract

Irregular multivariate time series (IMTS) are characterized by irregular time intervals within variables and unaligned observations across variables, posing challenges in learning temporal and variable dependencies. Many existing IMTS models either require padded samples to learn separately from temporal and variable dimensions, or represent original samples via bipartite graphs or sets. However, the former approaches often need to handle extra padding values affecting efficiency and disrupting original sampling patterns, while the latter ones have limitations in capturing dependencies among unaligned observations. To represent and learn both dependencies from original observations in a unified form, we propose HyperIMTS, a Hypergraph neural network for Irregular Multivariate Time Series forecasting. Observed values are converted as nodes in the hypergraph, interconnected by temporal and variable hyperedges to enable message passing among all observations. Through irregularity-aware message passing, HyperIMTS captures variable dependencies in a time-adaptive way to achieve accurate forecasting. Experiments demonstrate HyperIMTS's competitive performance among state-of-the-art models in IMTS forecasting with low computational cost.

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@article{li2025_2505.17431,
  title={ HyperIMTS: Hypergraph Neural Network for Irregular Multivariate Time Series Forecasting },
  author={ Boyuan Li and Yicheng Luo and Zhen Liu and Junhao Zheng and Jianming Lv and Qianli Ma },
  journal={arXiv preprint arXiv:2505.17431},
  year={ 2025 }
}
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