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LAPO: Internalizing Reasoning Efficiency via Length-Adaptive Policy Optimization
Episode 1008

LAPO: Internalizing Reasoning Efficiency via Length-Adaptive Policy Optimization

Daily Paper Cast

July 26, 202520m 14s

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Show Notes

🤗 Upvotes: 25 | cs.AI, cs.CL

Authors:
Xingyu Wu, Yuchen Yan, Shangke Lyu, Linjuan Wu, Yiwen Qiu, Yongliang Shen, Weiming Lu, Jian Shao, Jun Xiao, Yueting Zhuang

Title:
LAPO: Internalizing Reasoning Efficiency via Length-Adaptive Policy Optimization

Arxiv:
http://arxiv.org/abs/2507.15758v1

Abstract:
Large reasoning models have achieved remarkable performance through extended chain-of-thought sequences, yet this computational freedom leads to excessive token generation even for simple problems. We present Length-Adaptive Policy Optimization (LAPO), a novel framework that transforms reasoning length control from an external constraint into an intrinsic model capability. Unlike existing approaches that impose rigid limits or rely on post-hoc interventions, LAPO enables models to internalize an understanding of appropriate reasoning depth through a two-stage reinforcement learning process. In the first stage, models learn natural reasoning patterns by discovering the statistical distribution of successful solution lengths. The second stage leverages these patterns as meta-cognitive guidance, embedding them directly within the model's reasoning context to ensure inference-time flexibility. Experiments on mathematical reasoning benchmarks demonstrate that LAPO reduces token usage by up to 40.9\% while improving accuracy by 2.3\%. Our analysis reveals that models trained with LAPO develop emergent abilities to allocate computational resources based on problem complexity, achieving efficient reasoning without sacrificing quality.