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Poster

Peri-midFormer: Periodic Pyramid Transformer for Time Series Analysis

Qiang Wu · Gechang Yao · Zhixi Feng · Yang Shuyuan


Abstract:

Time series analysis finds wide applications in fields such as weather forecasting, anomaly detection, and behavior recognition. Previous methods attempted to model temporal variations directly using 1D time series. However, this has been quite challenging due to the discrete nature of data points in time series and the complexity of periodic variation. Based on observations of the multi-periodicity in time series and their inclusion relationships, we decouple the implied complex periodic variations into inclusion and overlap relationships among different level periodic components. This explicitly represents the naturally occurring pyramid-like properties in time series, where the top level is the original time series and lower levels consist of periodic components with gradually shorter periods, which we call the periodic pyramid. To further extract complex temporal variations, we introduce self-attention mechanism into the periodic pyramid, capturing complex periodic relationships by computing attention between periodic components based on their inclusion, overlap, and adjacency relationships. Our proposed Peri-midFormer demonstrates outstanding performance in five mainstream time series analysis tasks, including short- and long-term forecasting, imputation, classification, and anomaly detection.

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