The Path Not Taken: RLVR Provably Learns Off the Principals
Hanqing Zhu, Zhenyu Zhang, Hanxian Huang, DiJia Su, Zechun Liu, Jiawei Zhao, Igor Fedorov, Hamed Pirsiavash, Zhizhou Sha, Jinwon Lee, David Z. Pan, Zhangyang Wang, Yuandong Tian, Kai Sheng Tai

TL;DR
This paper provides a parameter-space analysis of RLVR, revealing it learns off principal directions through a Three-Gate Theory, contrasting with SFT, and offers insights for designing geometry-aware RLVR algorithms.
Contribution
It introduces a mechanistic Three-Gate Theory explaining RLVR's dynamics and characterizes its parameter-level learning behavior, contrasting it with SFT.
Findings
RLVR learns off principal directions with minimal spectral drift.
RLVR's updates are highly consistent across runs and datasets.
SFT targets principal weights and distorts the spectrum.
Abstract
Reinforcement Learning with Verifiable Rewards (RLVR) reliably improves the reasoning performance of large language models, yet it appears to modify only a small fraction of parameters. We revisit this paradox and show that sparsity is a surface artifact of a model-conditioned optimization bias: for a fixed pretrained model, updates consistently localize to preferred parameter regions, highly consistent across runs and largely invariant to datasets and RL recipes. We mechanistically explain these dynamics with a Three-Gate Theory: Gate I (KL Anchor) imposes a KL-constrained update; Gate II (Model Geometry) steers the step off principal directions into low-curvature, spectrum-preserving subspaces; and Gate III (Precision) hides micro-updates in non-preferred regions, making the off-principal bias appear as sparsity. We then validate this theory and, for the first time, provide a…
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Taxonomy
TopicsTopic Modeling · Reinforcement Learning in Robotics · Domain Adaptation and Few-Shot Learning
