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Task-Stratified Knowledge Scaling Laws for Post-Training Quantized Large Language Models

Computation and Language 2026-04-23 v4 Artificial Intelligence Machine Learning

Abstract

Post-Training Quantization (PTQ) is a critical strategy for efficient Large Language Models (LLMs) deployment. However, existing scaling laws primarily focus on general performance, overlooking crucial fine-grained factors and how quantization differentially impacts diverse knowledge capabilities. To address this, we establish Task-Stratified Knowledge Scaling Laws. By stratifying capabilities into memorization, application, and reasoning, we develop a framework that unifies model size, bit-width, and fine-grained factors: group size and calibration set size. Validated on 293 diverse PTQ configurations, our framework demonstrates strong fit and cross-architecture consistency. It reveals distinct sensitivities across knowledge capabilities: reasoning is precision-critical, application is scale-responsive, and memorization is calibration-sensitive. We highlight that in low-bit scenarios, optimizing these fine-grained factors is essential for preventing performance collapse. These findings provide an empirically-backed foundation for designing knowledge-aware quantization strategies.

Keywords

Cite

@article{arxiv.2508.18609,
  title  = {Task-Stratified Knowledge Scaling Laws for Post-Training Quantized Large Language Models},
  author = {Chenxi Zhou and Pengfei Cao and Jiang Li and Bohan Yu and Jinyu Ye and Jun Zhao and Kang Liu},
  journal= {arXiv preprint arXiv:2508.18609},
  year   = {2026}
}

Comments

Accepted to Findings of ACL 2026

R2 v1 2026-07-01T05:05:41.088Z