Beyond Outliers: A Data-Free Layer-wise Mixed-Precision Quantization Approach Driven by Numerical and Structural Dual-Sensitivity
arXiv cs.LG / 3/19/2026
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Key Points
- Introduces NSDS, a data-free, calibration-free layer-wise mixed-precision quantization framework that uses numerical and structural dual-sensitivity to guide bit allocation.
- Mechanistically decomposes each layer into distinct operational roles and measures sensitivity from both numerical and structural perspectives.
- Aggregates the dual-sensitivity scores into a unified layer-wise metric via MAD-Sigmoid and Soft-OR to drive bit allocation.
- Demonstrates superior performance across diverse models and downstream tasks without relying on calibration data.
- Addresses a key limitation of prior methods that treat all intra-layer weight modules uniformly and rely on a single numerical property.
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