The main goal of post-training quantization (PTQ) is to produced a compressed model whose output distribution is as close to the original model's as possible. To do this tractably, almost all LLM PTQ algorithms quantize linear layers by independently minimizing the immediate activation error. However, this localized objective ignores the effect of subsequent layers, so reducing it does not necessarily give a closer model. In this work, we introduce Yet Another Quantization Algorithm (YAQA), an adaptive rounding algorithm that uses Kronecker-factored approximations of each linear layer's Hessian with respect to the \textit{full model} KL divergence. YAQA consists of two components: Kronecker-factored sketches of the full layerwise Hessian that can be tractably computed for hundred-billion parameter LLMs, and a quantizer-independent rounding algorithm that uses these sketches and comes with theoretical guarantees. Across a wide range of models and quantizers, YAQA empirically reduces the KL divergence to the original model by $\approx 30%$ while achieving state of the art performance on downstream tasks.
Model-Preserving Adaptive Rounding
YAQA, an adaptive rounding algorithm using Kronecker-factored approximations of the full model's Hessian, reduces KL divergence and improves performance for post-training quantization of large language models.
- Year
- 2025
- Venue
- arXiv 2025
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- 3
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- arxiv.org/abs/2505.22988ARXIV-DEFAULT
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