English

DMamba: Decomposition-enhanced Mamba for Time Series Forecasting

Machine Learning 2026-02-11 v1 Artificial Intelligence

Abstract

State Space Models (SSMs), particularly Mamba, have shown potential in long-term time series forecasting. However, existing Mamba-based architectures often struggle with datasets characterized by non-stationary patterns. A key observation from time series theory is that the statistical nature of inter-variable relationships differs fundamentally between the trend and seasonal components of a decomposed series. Trend relationships are often driven by a few common stochastic factors or long-run equilibria, suggesting that they reside on a lower-dimensional manifold. In contrast, seasonal relationships involve dynamic, high-dimensional interactions like phase shifts and amplitude co-movements, requiring more expressive modeling. In this paper, we propose DMamba, a novel forecasting model that explicitly aligns architectural complexity with this component-specific characteristic. DMamba employs seasonal-trend decomposition and processes the components with specialized, differentially complex modules: a variable-direction Mamba encoder captures the rich, cross-variable dynamics within the seasonal component, while a simple Multi-Layer Perceptron (MLP) suffices to learn from the lower-dimensional inter-variable relationships in the trend component. Extensive experiments on diverse datasets demonstrate that DMamba sets a new state-of-the-art (SOTA), consistently outperforming both recent Mamba-based architectures and leading decomposition-based models.

Keywords

Cite

@article{arxiv.2602.09081,
  title  = {DMamba: Decomposition-enhanced Mamba for Time Series Forecasting},
  author = {Ruxuan Chen and Fang Sun},
  journal= {arXiv preprint arXiv:2602.09081},
  year   = {2026}
}

Comments

9 pages, 3 figures, 4 tables

R2 v1 2026-07-01T10:28:37.798Z