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📄 Abstract
Abstract: Rotations have become essential to state-of-the-art quantization pipelines
for large language models (LLMs) by effectively smoothing outliers in weights
and activations. However, further optimizing the rotation parameters offers
only limited performance gains and introduces significant training overhead:
due to rotation parameter sharing, full-model must be loaded simultaneously to
enable backpropagation, resulting in substantial memory consumption and limited
practical utility. In this work, we identify two fundamental limitations of
current rotational quantization methods: (i) rotation fails to align channel
means, resulting in wider quantization bounds and increased rounding errors;
and (ii) rotation makes the activation distribution more Gaussian-like,
increasing energy loss caused by clipping errors. To address these issues, we
introduce \textbf{BASE-Q}, a simple yet powerful approach that combines bias
correction and asymmetric scaling to effectively reduce rounding and clipping
errors. Furthermore, BASE-Q enables blockwise optimization, eliminating the
need for memory-intensive full-model backpropagation. Extensive experiments on
various LLMs and benchmarks demonstrate the effectiveness of BASE-Q, narrowing
the accuracy gap to full-precision models by 50.5\%, 42.9\%, and 29.2\%
compared to QuaRot, SpinQuant, and OSTQuant, respectively. The code will be
released soon.