DMSC: Dynamic Multi-Scale Coordination Framework for Time Series Forecasting
Haonan Yang, Jianchao Tang, Zhuo Li, Long Lan

TL;DR
The paper introduces DMSC, a novel framework for time series forecasting that dynamically models multi-scale dependencies through adaptive decomposition, interaction, and fusion mechanisms, achieving state-of-the-art results.
Contribution
DMSC presents a dynamic multi-scale coordination framework with adaptive decomposition, interaction, and fusion modules, overcoming static strategies and improving modeling of temporal dependencies.
Findings
Achieves state-of-the-art performance on 13 benchmarks.
Demonstrates superior computational efficiency.
Effectively models complex temporal dependencies.
Abstract
Time Series Forecasting (TSF) faces persistent challenges in modeling intricate temporal dependencies across different scales. Despite recent advances leveraging different decomposition operations and novel architectures based on CNN, MLP or Transformer, existing methods still struggle with static decomposition strategies, fragmented dependency modeling, and inflexible fusion mechanisms, limiting their ability to model intricate temporal dependencies. To explicitly solve the mentioned three problems respectively, we propose a novel Dynamic Multi-Scale Coordination Framework (DMSC) with Multi-Scale Patch Decomposition block (EMPD), Triad Interaction Block (TIB) and Adaptive Scale Routing MoE block (ASR-MoE). Specifically, EMPD is designed as a built-in component to dynamically segment sequences into hierarchical patches with exponentially scaled granularities, eliminating predefined…
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