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WFTNet: Exploiting Global and Local Periodicity in Long-Term Time Series Forecasting

Peiyuan Liu, Beiliang Wu, Naiqi Li, Tao Dai, Fengmao Lei, Jigang Bao, Yong Jiang, Shu–Tao Xia

202433 citationsDOI

Abstract

Recent CNN and Transformer-based models tried to utilize frequency and periodicity information for long-term time series forecasting. However, most existing work is based on Fourier transform, which cannot capture fine-grained and local frequency structure. In this paper, we propose a Wavelet-Fourier Transform Network (WFTNet) for long-term time series forecasting. WFTNet utilizes both Fourier and wavelet transforms to extract comprehensive temporal-frequency information from the signal, where Fourier transform captures the global periodic patterns and wavelet transform captures the local ones. Furthermore, we introduce a Periodicity-Weighted Coefficient (PWC) to adaptively balance the importance of global and local frequency patterns. Extensive experiments on various time series datasets show that WFTNet consistently outperforms other state-of-the-art baseline. Code is available at https://github.com/Hank0626/WFTNet.

Topics & Concepts

Wavelet transformComputer scienceWaveletTime–frequency analysisFourier transformSeries (stratigraphy)AlgorithmDiscrete wavelet transformFourier seriesTime seriesTerm (time)Harmonic wavelet transformPattern recognition (psychology)Artificial intelligenceMathematicsTelecommunicationsMachine learningMathematical analysisPaleontologyQuantum mechanicsBiologyPhysicsRadarTime Series Analysis and ForecastingNeural Networks and ApplicationsStock Market Forecasting Methods