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Hauptverfasser: Wang, Zhilin, Li, Yafu, Zhang, Shunkai, Wang, Zhi, Zhang, Haoran, Qu, Xiaoye, Cheng, Yu
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2602.08281
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author Wang, Zhilin
Li, Yafu
Zhang, Shunkai
Wang, Zhi
Zhang, Haoran
Qu, Xiaoye
Cheng, Yu
author_facet Wang, Zhilin
Li, Yafu
Zhang, Shunkai
Wang, Zhi
Zhang, Haoran
Qu, Xiaoye
Cheng, Yu
contents Whether Reinforcement Learning with Verifiable Rewards (RLVR) endows Large Language Models (LLMs) with new capabilities or merely elicits latent traces remains a central debate. In this work, we align with the former view, proposing a probabilistic framework where capability is defined by instance-level solvability. We hypothesize that the emergence of complex reasoning can be driven by sharpening atomic step probabilities, which enables models to overcome the exponential decay of success rates inherent in multi-step reasoning chains. Utilizing the Algebrarium framework, we train models exclusively on single-step operations and evaluate their performance on unseen multi-step tasks. Our empirical results confirm that: (1) RLVR incentivizes the exploration of previously inaccessible solution paths by amplifying the model's existing skills; (2) composite performance is strictly governed by the joint probability of atomic steps, evidenced by high Pearson correlation coefficients ($ρ\in [0.69, 0.96]$); and (3) RLVR, acting as a global optimizer, can cause specific skills to be sacrificed to maximize aggregate reward. Our work offers a novel explanation for emergent abilities in RLVR, suggesting that the iterative optimization of solvable problems enables models to develop the capabilities to tackle previously unsolvable scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2602_08281
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle New Skills or Sharper Primitives? A Probabilistic Perspective on the Emergence of Reasoning in RLVR
Wang, Zhilin
Li, Yafu
Zhang, Shunkai
Wang, Zhi
Zhang, Haoran
Qu, Xiaoye
Cheng, Yu
Computation and Language
68T50
I.2.7
Whether Reinforcement Learning with Verifiable Rewards (RLVR) endows Large Language Models (LLMs) with new capabilities or merely elicits latent traces remains a central debate. In this work, we align with the former view, proposing a probabilistic framework where capability is defined by instance-level solvability. We hypothesize that the emergence of complex reasoning can be driven by sharpening atomic step probabilities, which enables models to overcome the exponential decay of success rates inherent in multi-step reasoning chains. Utilizing the Algebrarium framework, we train models exclusively on single-step operations and evaluate their performance on unseen multi-step tasks. Our empirical results confirm that: (1) RLVR incentivizes the exploration of previously inaccessible solution paths by amplifying the model's existing skills; (2) composite performance is strictly governed by the joint probability of atomic steps, evidenced by high Pearson correlation coefficients ($ρ\in [0.69, 0.96]$); and (3) RLVR, acting as a global optimizer, can cause specific skills to be sacrificed to maximize aggregate reward. Our work offers a novel explanation for emergent abilities in RLVR, suggesting that the iterative optimization of solvable problems enables models to develop the capabilities to tackle previously unsolvable scenarios.
title New Skills or Sharper Primitives? A Probabilistic Perspective on the Emergence of Reasoning in RLVR
topic Computation and Language
68T50
I.2.7
url https://arxiv.org/abs/2602.08281