FEAT: A Linear-Complexity Foundation Model for Extremely Large Structured Data
arXiv cs.LG / 3/18/2026
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Key Points
- FEAT is a new linear-complexity foundation model designed for extremely large structured data across domains such as healthcare, finance, e-commerce, and scientific data management.
- It replaces quadratic self-attention with a hybrid linear encoding in a multi-layer dual-axis architecture, combining adaptive-fusion bi-Mamba-2 for local dependencies and convolutional gated linear attention for global memory.
- The model uses a hybrid structural causal model pipeline and a stable reconstruction objective to improve robustness beyond synthetic-only pre-training.
- In experiments on 11 real-world datasets, FEAT outperforms baselines in zero-shot performance, scales linearly, and delivers up to 40x faster inference.
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