A Multi-Scale Decomposition MLP-Mixer for Time Series Analysis

Author:

Zhong Shuhan1,Song Sizhe1,Zhuo Weipeng2,Li Guanyao3,Liu Yang3,Chan S.-H. Gary1

Affiliation:

1. Department of Computer Science and Engineering, The Hong Kong University of Science and Technology

2. Guangdong Provincial Key Laboratory IRADS and Department of Computer Science, BNU-HKBU United International College

3. Guangdong Enterprise Key Laboratory for Urban Sensing, Monitoring and Early Warning, Guangzhou Urban Planning and Design Survey Research Institute

Abstract

Time series data, including univariate and multivariate ones, are characterized by unique composition and complex multi-scale temporal variations. They often require special consideration of decomposition and multi-scale modeling to analyze. Existing deep learning methods on this best fit to univariate time series only, and have not sufficiently considered sub-series modeling and decomposition completeness. To address these challenges, we propose MSD-Mixer, a M ulti- S cale D ecomposition MLP- Mixer , which learns to explicitly decompose and represent the input time series in its different layers. To handle the multi-scale temporal patterns and multivariate dependencies, we propose a novel temporal patching approach to model the time series as multi-scale patches, and employ MLPs to capture intra- and inter-patch variations and channel-wise correlations. In addition, we propose a novel loss function to constrain both the mean and the autocorrelation of the decomposition residual for better decomposition completeness. Through extensive experiments on various real-world datasets for five common time series analysis tasks, we demonstrate that MSD-Mixer consistently and significantly outperforms other state-of-the-art algorithms with better efficiency.

Publisher

Association for Computing Machinery (ACM)

Reference57 articles.

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