On the Optimal Reasoning Length for RL-Trained Language Models
Abstract
Length control methods in reinforcement learning-trained language models affect reasoning performance and computational efficiency, with optimal output lengths balancing these factors.
Reinforcement learning substantially improves reasoning in large language models, but it also tends to lengthen chain of thought outputs and increase computational cost during both training and inference. Though length control methods have been proposed, it remains unclear what the optimal output length is for balancing efficiency and performance. In this work, we compare several length control methods on two models, Qwen3-1.7B Base and DeepSeek-R1-Distill-Qwen-1.5B. Our results indicate that length penalties may hinder reasoning acquisition, while properly tuned length control can improve efficiency for models with strong prior reasoning. By extending prior work to RL trained policies, we identify two failure modes, 1) long outputs increase dispersion, and 2) short outputs lead to under-thinking.
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RL-trained reasoning models often produce longer CoT, increasing test-time cost. We compare several length-control methods on Qwen3-1.7B-Base and DeepSeek-R1-Distill-Qwen-1.5B, and characterize when length penalties hurt reasoning acquisition vs when tuned control improves efficiency. We also highlight two failure modes: overly long outputs increase dispersion, while overly short outputs cause under-thinking.
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