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ScatterFusion: A Hierarchical Scattering Transform Framework for Enhanced Time Series Forecasting

About

Time series forecasting presents significant challenges due to the complex temporal dependencies at multiple time scales. This paper introduces ScatterFusion, a novel framework that synergistically integrates scattering transforms with hierarchical attention mechanisms for robust time series forecasting. Our approach comprises four key components: (1) a Hierarchical Scattering Transform Module (HSTM) that extracts multi-scale invariant features capturing both local and global patterns; (2) a Scale-Adaptive Feature Enhancement (SAFE) module that dynamically adjusts feature importance across different scales; (3) a Multi-Resolution Temporal Attention (MRTA) mechanism that learns dependencies at varying time horizons; and (4) a Trend-Seasonal-Residual (TSR) decomposition-guided structure-aware loss function. Extensive experiments on seven benchmark datasets demonstrate that ScatterFusion outperforms other common methods, achieving significant reductions in error metrics across various prediction horizons.

Wei Li• 2026

Related benchmarks

TaskDatasetResultRank
Long-term multivariate forecastingECL horizon 96 (test)
MSE0.163
22
Time Series ForecastingETTh1 Horizon 96 (test)
MSE0.352
17
Time Series ForecastingETTh1 Horizon 720 (test)
MSE0.492
17
Time Series ForecastingTraffic Horizon 720 (test)
MSE0.502
17
Time Series ForecastingTraffic Horizon 96 (test)
MSE0.437
17
Time Series ForecastingECL Horizon 720 (test)
MSE0.204
9
Time Series ForecastingWeather Horizon 96 (test)
MSE0.172
9
Time Series ForecastingWeather Horizon 720 (test)
MSE0.349
9
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