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3 months ago

FiLM: Frequency improved Legendre Memory Model for Long-term Time Series Forecasting

Tian Zhou Ziqing Ma Xue wang Qingsong Wen Liang Sun Tao Yao Wotao Yin Rong Jin

FiLM: Frequency improved Legendre Memory Model for Long-term Time Series Forecasting

Abstract

Recent studies have shown that deep learning models such as RNNs and Transformers have brought significant performance gains for long-term forecasting of time series because they effectively utilize historical information. We found, however, that there is still great room for improvement in how to preserve historical information in neural networks while avoiding overfitting to noise presented in the history. Addressing this allows better utilization of the capabilities of deep learning models. To this end, we design a \textbf{F}requency \textbf{i}mproved \textbf{L}egendre \textbf{M}emory model, or {\bf FiLM}: it applies Legendre Polynomials projections to approximate historical information, uses Fourier projection to remove noise, and adds a low-rank approximation to speed up computation. Our empirical studies show that the proposed FiLM significantly improves the accuracy of state-of-the-art models in multivariate and univariate long-term forecasting by (\textbf{20.3\%}, \textbf{22.6\%}), respectively. We also demonstrate that the representation module developed in this work can be used as a general plug-in to improve the long-term prediction performance of other deep learning modules. Code is available at https://github.com/tianzhou2011/FiLM/

Code Repositories

tianzhou2011/FiLM
pytorch
Mentioned in GitHub
damo-di-ml/neurips2022-film
pytorch
Mentioned in GitHub
WenjieDu/PyPOTS
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
time-series-forecasting-on-etth1-192-1FiLM
MAE: 0.423
MSE: 0.414
time-series-forecasting-on-etth1-192-2FiLM
MAE: 0.207
MSE: 0.072
time-series-forecasting-on-etth1-336-1FiLM
MAE: 0.445
MSE: 0.442
time-series-forecasting-on-etth1-336-2FiLM
MAE: 0.229
MSE: 0.083
time-series-forecasting-on-etth1-720-1FiLM
MAE: 0.472
MSE: 0.465
time-series-forecasting-on-etth1-720-2FiLM
MAE: 0.24
MSE: 0.09
time-series-forecasting-on-etth1-96-1FiLM
MAE: 0.394
MSE: 0.371
time-series-forecasting-on-etth1-96-2FiLM
MAE: 0.178
MSE: 0.055
time-series-forecasting-on-etth2-192-1FiLM
MAE: 0.4
MSE: 0.357
time-series-forecasting-on-etth2-192-2FiLM
MAE: 0.335
MSE: 0.182
time-series-forecasting-on-etth2-336-1FiLM
MAE: 0.417
MSE: 0.377
time-series-forecasting-on-etth2-336-2FiLM
MAE: 0.367
MSE: 0.204
time-series-forecasting-on-etth2-720-1FiLM
MAE: 0.456
MSE: 0.439
time-series-forecasting-on-etth2-720-2FiLM
MAE: 0.396
MSE: 0.241
time-series-forecasting-on-etth2-96-1FiLM
MAE: 0.348
MSE: 0.284
time-series-forecasting-on-etth2-96-2FiLM
MAE: 0.272
MSE: 0.127

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