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FilterTS: Comprehensive Frequency Filtering for Multivariate Time Series Forecasting

About

Multivariate time series forecasting is crucial across various industries, where accurate extraction of complex periodic and trend components can significantly enhance prediction performance. However, existing models often struggle to capture these intricate patterns. To address these challenges, we propose FilterTS, a novel forecasting model that utilizes specialized filtering techniques based on the frequency domain. FilterTS introduces a Dynamic Cross-Variable Filtering Module, a key innovation that dynamically leverages other variables as filters to extract and reinforce shared variable frequency components across variables in multivariate time series. Additionally, a Static Global Filtering Module captures stable frequency components, identified throughout the entire training set. Moreover, the model is built in the frequency domain, converting time-domain convolutions into frequency-domain multiplicative operations to enhance computational efficiency. Extensive experimental results on eight real-world datasets have demonstrated that FilterTS significantly outperforms existing methods in terms of prediction accuracy and computational efficiency.

Yulong Wang, Yushuo Liu, Xiaoyi Duan, Kai Wang• 2025

Related benchmarks

TaskDatasetResultRank
Fluid Dynamics PredictionHigh-Re (test)
MAE0.0528
20
Fluid Dynamics PredictionLow-Re (test)
MAE0.0195
20
Fluid Dynamics PredictionCavity (test)
MAE0.0099
20
Fluid Dynamics PredictionDam (test)
MAE0.0331
20
Fluid Dynamics PredictionChannel (test)
MAE0.0702
20
Fluid Dynamics PredictionDam Zero-shot from Channel
MAE0.0333
9
Fluid Dynamics PredictionLow-Re Zero-shot from Dam
MAE0.0314
9
Fluid Dynamics PredictionHigh-Re Zero-shot from Low-Re
MAE0.0848
9
Fluid Dynamics PredictionChannel Zero-shot from Cavity
MAE0.0646
9
Fluid Dynamics PredictionCavity Zero-shot from High-Re
MAE0.0589
9
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