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Main Authors: Zhong, Siru, Meng, Zhao, Fu, Haohuan, Li, Haoyang, Wen, Qingsong, Liang, Yuxuan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.06310
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author Zhong, Siru
Meng, Zhao
Fu, Haohuan
Li, Haoyang
Wen, Qingsong
Liang, Yuxuan
author_facet Zhong, Siru
Meng, Zhao
Fu, Haohuan
Li, Haoyang
Wen, Qingsong
Liang, Yuxuan
contents Local temporal patterns in real-world time series continuously shift, rendering globally shared transformations suboptimal. Current deep forecasting models, despite their scale and complexity, rely on fixed weight matrices applied uniformly to all temporal tokens. This creates a static pattern response: models settle into a compromised average, unable to adapt to changing local dynamics. We introduce Dynamic Pattern Recalibration (DPR), a backbone-agnostic mechanism that resolves this via token-level recalibration. Through a lightweight "Perceive-Route-Modulate" pipeline, DPR computes a soft-routing distribution over a learned basis of adaptive response patterns, generating a time-aware modulation vector that recalibrates hidden states via a residual Hadamard product. As a backbone-agnostic adapter, DPR enhances forecasting across diverse architectures with minimal overhead, confirming it addresses a general bottleneck. As a minimalist standalone model, DPRNet achieves competitive performance across 12 benchmarks, validating dynamic recalibration against macroscopic parameter scaling.
format Preprint
id arxiv_https___arxiv_org_abs_2605_06310
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Perceive, Route and Modulate: Dynamic Pattern Recalibration for Time Series Forecasting
Zhong, Siru
Meng, Zhao
Fu, Haohuan
Li, Haoyang
Wen, Qingsong
Liang, Yuxuan
Machine Learning
Local temporal patterns in real-world time series continuously shift, rendering globally shared transformations suboptimal. Current deep forecasting models, despite their scale and complexity, rely on fixed weight matrices applied uniformly to all temporal tokens. This creates a static pattern response: models settle into a compromised average, unable to adapt to changing local dynamics. We introduce Dynamic Pattern Recalibration (DPR), a backbone-agnostic mechanism that resolves this via token-level recalibration. Through a lightweight "Perceive-Route-Modulate" pipeline, DPR computes a soft-routing distribution over a learned basis of adaptive response patterns, generating a time-aware modulation vector that recalibrates hidden states via a residual Hadamard product. As a backbone-agnostic adapter, DPR enhances forecasting across diverse architectures with minimal overhead, confirming it addresses a general bottleneck. As a minimalist standalone model, DPRNet achieves competitive performance across 12 benchmarks, validating dynamic recalibration against macroscopic parameter scaling.
title Perceive, Route and Modulate: Dynamic Pattern Recalibration for Time Series Forecasting
topic Machine Learning
url https://arxiv.org/abs/2605.06310