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Dual-Prototype Disentanglement: A Context-Aware Enhancement Framework for Time Series Forecasting

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Time series forecasting has witnessed significant progress with deep learning. While prevailing approaches enhance forecasting performance by modifying architectures or introducing novel enhancement strategies, they often fail to dynamically disentangle and leverage the complex, intertwined temporal patterns inherent in time series, thus resulting in the learning of static, averaged representations that lack context-aware capabilities. To address this, we propose the Dual-Prototype Adaptive Disentanglement framework (DPAD), a model-agnostic auxiliary method that equips forecasting models with the ability of pattern disentanglement and context-aware adaptation. Specifically, we construct a Dynamic Dual-Prototype bank (DDP), comprising a common pattern bank with strong temporal priors to capture prevailing trend or seasonal patterns, and a rare pattern bank dynamically memorizing critical yet infrequent events, and then an Dual-Path Context-aware routing (DPC) mechanism is proposed to enhance outputs with selectively retrieved context-specific pattern representations from the DDP. Additionally, we introduce a Disentanglement-Guided Loss (DGLoss) to ensure that each prototype bank specializes in its designated role while maintaining comprehensive coverage. Comprehensive experiments demonstrate that DPAD consistently improves forecasting performance and reliability of state-of-the-art models across diverse real-world benchmarks.

Haonan Yang, Jianchao Tang, Zhuo Li• 2026

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingETTh1
MSE0.432
836
Time Series ForecastingETTh2
MSE0.367
796
Time Series ForecastingETTm2
MSE0.281
536
Time Series ForecastingETTh1 (test)
MSE0.539
398
Time Series ForecastingElectricity
MSE0.165
237
Time Series ForecastingPeMS08
MSE0.16
229
Time Series ForecastingExchange
MSE0.345
227
Time Series ForecastingPeMS03
MSE0.125
176
Time Series ForecastingPeMS04
MSE0.111
169
Time Series ForecastingPeMS07
MSE0.089
168
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