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Auteurs principaux: Qin, Dalin, Li, Yehui, Chen, Weiqi, Zhu, Zhaoyang, Wen, Qingsong, Sun, Liang, Pinson, Pierre, Wang, Yi
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2409.19718
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author Qin, Dalin
Li, Yehui
Chen, Weiqi
Zhu, Zhaoyang
Wen, Qingsong
Sun, Liang
Pinson, Pierre
Wang, Yi
author_facet Qin, Dalin
Li, Yehui
Chen, Weiqi
Zhu, Zhaoyang
Wen, Qingsong
Sun, Liang
Pinson, Pierre
Wang, Yi
contents Complex distribution shifts are the main obstacle to achieving accurate long-term time series forecasting. Several efforts have been conducted to capture the distribution characteristics and propose adaptive normalization techniques to alleviate the influence of distribution shifts. However, these methods neglect the intricate distribution dynamics observed from various scales and the evolving functions of distribution dynamics and normalized mapping relationships. To this end, we propose a novel model-agnostic Evolving Multi-Scale Normalization (EvoMSN) framework to tackle the distribution shift problem. Flexible normalization and denormalization are proposed based on the multi-scale statistics prediction module and adaptive ensembling. An evolving optimization strategy is designed to update the forecasting model and statistics prediction module collaboratively to track the shifting distributions. We evaluate the effectiveness of EvoMSN in improving the performance of five mainstream forecasting methods on benchmark datasets and also show its superiority compared to existing advanced normalization and online learning approaches. The code is publicly available at https://github.com/qindalin/EvoMSN.
format Preprint
id arxiv_https___arxiv_org_abs_2409_19718
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evolving Multi-Scale Normalization for Time Series Forecasting under Distribution Shifts
Qin, Dalin
Li, Yehui
Chen, Weiqi
Zhu, Zhaoyang
Wen, Qingsong
Sun, Liang
Pinson, Pierre
Wang, Yi
Machine Learning
Complex distribution shifts are the main obstacle to achieving accurate long-term time series forecasting. Several efforts have been conducted to capture the distribution characteristics and propose adaptive normalization techniques to alleviate the influence of distribution shifts. However, these methods neglect the intricate distribution dynamics observed from various scales and the evolving functions of distribution dynamics and normalized mapping relationships. To this end, we propose a novel model-agnostic Evolving Multi-Scale Normalization (EvoMSN) framework to tackle the distribution shift problem. Flexible normalization and denormalization are proposed based on the multi-scale statistics prediction module and adaptive ensembling. An evolving optimization strategy is designed to update the forecasting model and statistics prediction module collaboratively to track the shifting distributions. We evaluate the effectiveness of EvoMSN in improving the performance of five mainstream forecasting methods on benchmark datasets and also show its superiority compared to existing advanced normalization and online learning approaches. The code is publicly available at https://github.com/qindalin/EvoMSN.
title Evolving Multi-Scale Normalization for Time Series Forecasting under Distribution Shifts
topic Machine Learning
url https://arxiv.org/abs/2409.19718