Efficient Time Series Forecasting via Hyper-Complex Models and Frequency Aggregation
Yakir, Eyal, Tsur, Dor, Permuter, Haim
–arXiv.org Artificial Intelligence
Time series forecasting is a long-standing problem in statistics and machine learning. One of the key challenges is processing sequences with long-range dependencies. To that end, a recent line of work applied the short-time Fourier transform (STFT), which partitions the sequence into multiple subsequences and applies a Fourier transform to each separately. We propose the Frequency Information Aggregation (FIA)-Net, which is based on a novel complex-valued MLP architecture that aggregates adjacent window information in the frequency domain. To further increase the receptive field of the FIA-Net, we treat the set of windows as hyper-complex (HC) valued vectors and employ HC algebra to efficiently combine information from all STFT windows altogether. Using the HC-MLP backbone allows for improved handling of sequences with long-term dependence. Furthermore, due to the nature of HC operations, the HC-MLP uses up to three times fewer parameters than the equivalent standard window aggregation method. We evaluate the FIA-Net on various time-series benchmarks and show that the proposed methodologies outperform existing state of the art methods in terms of both accuracy and efficiency. Our code is publicly available on https://anonymous.4open.science/r/research-1803/.
arXiv.org Artificial Intelligence
Feb-27-2025
- Country:
- Oceania
- New Zealand (0.04)
- Australia (0.04)
- North America
- United States > California
- San Francisco County > San Francisco (0.04)
- Trinidad and Tobago > Trinidad
- Canada > Ontario
- Hamilton (0.04)
- United States > California
- Europe
- United Kingdom (0.04)
- Switzerland (0.04)
- Germany (0.04)
- Asia
- Singapore (0.04)
- Middle East > Israel (0.04)
- Japan (0.04)
- China (0.04)
- Oceania
- Genre:
- Research Report > New Finding (0.93)
- Industry:
- Energy (0.67)
- Technology: