LGNov 21, 2025

Layer-Wise High-Impact Parameter Ratio Optimization in Post-Training Quantization for Large Language Models

arXiv:2511.17801v1
Originality Incremental advance
AI Analysis

This work addresses computational and memory challenges for deploying large language models, offering an incremental improvement over existing quantization methods by optimizing layer-specific sensitivities.

The paper tackles the problem of accuracy loss in post-training quantization of large language models at low bit-widths by proposing a layer-wise optimization framework for high-impact parameter ratios, achieving a balance between computational efficiency and model accuracy with competitive performance against state-of-the-art methods.

Large language models (LLMs) have significantly advanced natural language processing, but their massive parameter counts create substantial computational and memory challenges during deployment. Post-training quantization (PTQ) has emerged as a promising approach to mitigate these challenges with minimal overhead. While existing PTQ methods can effectively quantize LLMs, they experience substantial accuracy loss at extremely low bit-widths, primarily due to high-impact parameters that significantly influence quantization performance. Several approaches address these issues by identifying and retaining the high-impact parameters in FP16 format. However, they apply fixed ratios of high-impact parameters across all layers, overlooking layer-wise sensitivity variations. In this paper, we propose a quadratic optimization framework that determines layer-specific ratios of high-impact parameters while considering inter-layer dependencies. We quantize high-impact parameters to moderate bit-widths, which often result in negligible performance degradation in quantized LLMs, while the remaining parameters can be quantized to extremely low bit-widths. Under the same resource-constrained budget, this allows for preserving more high-impact parameters than methods that keep selecting a few in FP16 format. Additionally, the proposed framework allows us to leverage an advanced quantization method that often requires extensive learnable parameters solely for high-impact parameters, while applying a computationally efficient method to the rest. Our approach achieves an effective balance between computational efficiency and model accuracy while maintaining high performance compared to state-of-the-art methods.

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