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arxiv:2602.15322

On Surprising Effectiveness of Masking Updates in Adaptive Optimizers

Published on Feb 17
· Submitted by
taesiri
on Feb 18
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Abstract

Random parameter update masking achieves superior optimization for large language models by inducing curvature-dependent regularization, with a momentum-aligned variant delivering significant performance improvements over state-of-the-art adaptive optimizers.

AI-generated summary

Training large language models (LLMs) relies almost exclusively on dense adaptive optimizers with increasingly sophisticated preconditioners. We challenge this by showing that randomly masking parameter updates can be highly effective, with a masked variant of RMSProp consistently outperforming recent state-of-the-art optimizers. Our analysis reveals that the random masking induces a curvature-dependent geometric regularization that smooths the optimization trajectory. Motivated by this finding, we introduce Momentum-aligned gradient masking (Magma), which modulates the masked updates using momentum-gradient alignment. Extensive LLM pre-training experiments show that Magma is a simple drop-in replacement for adaptive optimizers with consistent gains and negligible computational overhead. Notably, for the 1B model size, Magma reduces perplexity by over 19\% and 9\% compared to Adam and Muon, respectively.

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Randomly masking parameter updates in adaptive optimizers yields curvature-regularization; Magma, momentum-aligned masking, is a drop-in that improves LLM perplexity (about 19% vs Adam, 9% vs Muon) with minimal overhead.

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