Accurate and Efficient Multi-Channel Time Series Forecasting via Sparse Attention Mechanism
arXiv cs.AI / 3/20/2026
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Key Points
- Li-Net introduces Linear-Network, a novel architecture for multi-channel time series forecasting that captures both linear and non-linear dependencies among channels.
- It dynamically compresses representations across sequence and channel dimensions and passes them through a configurable non-linear module before reconstructing forecasts.
- The approach integrates a sparse Top-K Softmax attention mechanism within a multi-scale projection framework to focus on the most informative time steps and features, enabling efficient computation.
- It supports fusion of multi-modal embeddings to guide the sparse attention and enhance cross-channel information integration.
- Experimental results on real-world benchmarks show Li-Net achieves competitive accuracy while using significantly less memory and delivering faster inference than state-of-the-art baselines, with ablation studies validating each component.
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