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Main Authors: Chen, Zihao, Andre, Alexandre, Ma, Wenrui, Knight, Ian, Shuvaev, Sergey, Dyer, Eva
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.24898
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author Chen, Zihao
Andre, Alexandre
Ma, Wenrui
Knight, Ian
Shuvaev, Sergey
Dyer, Eva
author_facet Chen, Zihao
Andre, Alexandre
Ma, Wenrui
Knight, Ian
Shuvaev, Sergey
Dyer, Eva
contents Forecasting is critical in areas such as finance, biology, and healthcare. Despite the progress in the field, making accurate forecasts remains challenging because real-world time series contain both global trends, local fine-grained structure, and features on multiple scales in between. Here, we present a new forecasting method, PRISM (Partitioned Representation for Iterative Sequence Modeling), that addresses this challenge through a learnable tree-based partitioning of the signal. At the root of the tree, a global representation captures coarse trends in the signal, while recursive splits reveal increasingly localized views of the signal. At each level of the tree, data are projected onto a time-frequency basis (e.g., wavelets or exponential moving averages) to extract scale-specific features, which are then aggregated across the hierarchy. This design allows the model to jointly capture global structure and local dynamics of the signal, enabling accurate forecasting. Experiments across benchmark datasets show that our method outperforms state-of-the-art methods for forecasting. Overall, these results demonstrate that our hierarchical approach provides a lightweight and flexible framework for forecasting multivariate time series. The code is available at https://github.com/nerdslab/prism.
format Preprint
id arxiv_https___arxiv_org_abs_2512_24898
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PRISM: A hierarchical multiscale approach for time series forecasting
Chen, Zihao
Andre, Alexandre
Ma, Wenrui
Knight, Ian
Shuvaev, Sergey
Dyer, Eva
Machine Learning
Forecasting is critical in areas such as finance, biology, and healthcare. Despite the progress in the field, making accurate forecasts remains challenging because real-world time series contain both global trends, local fine-grained structure, and features on multiple scales in between. Here, we present a new forecasting method, PRISM (Partitioned Representation for Iterative Sequence Modeling), that addresses this challenge through a learnable tree-based partitioning of the signal. At the root of the tree, a global representation captures coarse trends in the signal, while recursive splits reveal increasingly localized views of the signal. At each level of the tree, data are projected onto a time-frequency basis (e.g., wavelets or exponential moving averages) to extract scale-specific features, which are then aggregated across the hierarchy. This design allows the model to jointly capture global structure and local dynamics of the signal, enabling accurate forecasting. Experiments across benchmark datasets show that our method outperforms state-of-the-art methods for forecasting. Overall, these results demonstrate that our hierarchical approach provides a lightweight and flexible framework for forecasting multivariate time series. The code is available at https://github.com/nerdslab/prism.
title PRISM: A hierarchical multiscale approach for time series forecasting
topic Machine Learning
url https://arxiv.org/abs/2512.24898