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Main Authors: Ma, Linkai, Yu, Tingzhou, Drineas, Petros
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.00312
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author Ma, Linkai
Yu, Tingzhou
Drineas, Petros
author_facet Ma, Linkai
Yu, Tingzhou
Drineas, Petros
contents Over the past half-dozen years, stochastic rounding (SR) has regained significant attention as a quantization scheme for low-precision floating-point arithmetic, with applications spanning numerical analysis and modern machine learning systems. Recent work has shown that SR acts as an implicit regularizer by increasing the smallest singular value of extremely tall-and-thin (or, symmetrically, short-and-fat) matrices. In this work, we substantially sharpen and extend this understanding in two directions. First, we show that the regularization effect of SR is not restricted to extreme aspect ratio regimes: it persists for matrices with constant aspect ratio. Second, we demonstrate that SR does not merely regularize the smallest singular value, but instead lifts entire clusters of singular values at the tail of the spectrum. Together, these results provide a more general characterization of stochastic rounding as a spectral regularizer, revealing that its effects extend beyond extremal aspect ratios and act on a broader portion of the singular value spectrum.
format Preprint
id arxiv_https___arxiv_org_abs_2606_00312
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Stochastic Rounding Increases Small Singular Values
Ma, Linkai
Yu, Tingzhou
Drineas, Petros
Numerical Analysis
Machine Learning
Over the past half-dozen years, stochastic rounding (SR) has regained significant attention as a quantization scheme for low-precision floating-point arithmetic, with applications spanning numerical analysis and modern machine learning systems. Recent work has shown that SR acts as an implicit regularizer by increasing the smallest singular value of extremely tall-and-thin (or, symmetrically, short-and-fat) matrices. In this work, we substantially sharpen and extend this understanding in two directions. First, we show that the regularization effect of SR is not restricted to extreme aspect ratio regimes: it persists for matrices with constant aspect ratio. Second, we demonstrate that SR does not merely regularize the smallest singular value, but instead lifts entire clusters of singular values at the tail of the spectrum. Together, these results provide a more general characterization of stochastic rounding as a spectral regularizer, revealing that its effects extend beyond extremal aspect ratios and act on a broader portion of the singular value spectrum.
title Stochastic Rounding Increases Small Singular Values
topic Numerical Analysis
Machine Learning
url https://arxiv.org/abs/2606.00312