Disentangling Long-Short Term State Under Unknown Interventions for Online Time Series Forecasting
Abstract
Current methods for time series forecasting struggle in the online scenario, since it is difficult to preserve long-term dependency while adapting short-term changes when data are arriving sequentially. Although some recent methods solve this problem by controlling the updates of latent states, they cannot disentangle the long/short-term states, leading to the inability to effectively adapt to nonstationary. To tackle this challenge, we propose a general framework to disentangle long/short-term states for online time series forecasting. Our idea is inspired by the observations where short-term changes can be led by unknown interventions like abrupt policies in the stock market. Based on this insight, we formalize a data generation process with unknown interventions on short-term states. Under mild assumptions, we further leverage the independence of short-term states led by unknown interventions to establish the identification theory to achieve the disentanglement of long/short-term states. Built on this theory, we develop a Long Short-Term Disentanglement model (LSTD) to extract the long/short-term states with long/short term encoders, respectively. Furthermore, the LSTD model incorporates a smooth constraint to preserve the long-term dependencies and an interrupted dependency constraint to enforce the forgetting of short-term dependencies, together boosting the disentanglement of long/short-term states. Experimental results on several benchmark datasets show that our LSTD model outperforms existing methods for online time series forecasting, validating its efficacy in real-world applications.
Cite
Text
Cai et al. "Disentangling Long-Short Term State Under Unknown Interventions for Online Time Series Forecasting." AAAI Conference on Artificial Intelligence, 2025. doi:10.1609/AAAI.V39I15.33717Markdown
[Cai et al. "Disentangling Long-Short Term State Under Unknown Interventions for Online Time Series Forecasting." AAAI Conference on Artificial Intelligence, 2025.](https://mlanthology.org/aaai/2025/cai2025aaai-disentangling/) doi:10.1609/AAAI.V39I15.33717BibTeX
@inproceedings{cai2025aaai-disentangling,
title = {{Disentangling Long-Short Term State Under Unknown Interventions for Online Time Series Forecasting}},
author = {Cai, Ruichu and Huang, Haiqin and Jiang, Zhifan and Li, Zijian and Zhou, Changze and Liu, Yuequn and Liu, Yuming and Hao, Zhifeng},
booktitle = {AAAI Conference on Artificial Intelligence},
year = {2025},
pages = {15641-15649},
doi = {10.1609/AAAI.V39I15.33717},
url = {https://mlanthology.org/aaai/2025/cai2025aaai-disentangling/}
}