Time Series Continuous Modeling for Imputation and Forecasting with Implicit Neural Representations
Abstract
We introduce a novel modeling approach for time series imputation and forecasting, tailored to address the challenges often encountered in real-world data, such as irregular samples, missing data, or unaligned measurements from multiple sensors. Our method relies on a continuous-time-dependent model of the series' evolution dynamics. It leverages adaptations of conditional, implicit neural representations for sequential data. A modulation mechanism, driven by a meta-learning algorithm, allows adaptation to unseen samples and extrapolation beyond observed time-windows for long-term predictions. The model provides a highly flexible and unified framework for imputation and forecasting tasks across a wide range of challenging scenarios. It achieves state-of-the-art performance on classical benchmarks and outperforms alternative time-continuous models.
Cite
Text
Le Naour et al. "Time Series Continuous Modeling for Imputation and Forecasting with Implicit Neural Representations." Transactions on Machine Learning Research, 2024.Markdown
[Le Naour et al. "Time Series Continuous Modeling for Imputation and Forecasting with Implicit Neural Representations." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/naour2024tmlr-time/)BibTeX
@article{naour2024tmlr-time,
title = {{Time Series Continuous Modeling for Imputation and Forecasting with Implicit Neural Representations}},
author = {Le Naour, Etienne and Serrano, Louis and Migus, Léon and Yin, Yuan and Agoua, Ghislain and Baskiotis, Nicolas and Gallinari, Patrick and Guigue, Vincent},
journal = {Transactions on Machine Learning Research},
year = {2024},
url = {https://mlanthology.org/tmlr/2024/naour2024tmlr-time/}
}