Routing Channel-Patch Dependencies in Time Series Forecasting with Graph Spectral Decomposition
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces xCPD, a generic plugin to adaptively model channel-patch dependencies in multivariate time series forecasting using graph spectral decomposition.
- It projects multivariate signals into the frequency domain via a shared graph Fourier basis and groups patches into low-, mid-, and high-frequency bands based on spectral energy.
- It applies a channel-adaptive routing mechanism that dynamically adjusts inter-channel interaction for each patch, enabling selective activation of frequency-specific experts.
- The approach can be integrated on top of existing CI and CD forecasting models, consistently enhancing accuracy and generalization across benchmarks, with code available at the linked GitHub repository.
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