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Main Authors: Yao, Jian, Cheng, Ran, Wu, Xingyu, Wu, Jibin, Tan, Kay Chen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.23433
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author Yao, Jian
Cheng, Ran
Wu, Xingyu
Wu, Jibin
Tan, Kay Chen
author_facet Yao, Jian
Cheng, Ran
Wu, Xingyu
Wu, Jibin
Tan, Kay Chen
contents The reasoning capabilities of large language models (LLMs) have advanced rapidly, particularly following the release of DeepSeek R1, which has inspired a surge of research into data quality and reinforcement learning (RL) algorithms. Despite the pivotal role diversity plays in RL, its influence on LLM reasoning remains largely underexplored. To bridge this gap, this work presents a systematic investigation into the impact of diversity in RL-based training for LLM reasoning, and proposes a novel diversity-aware policy optimization method. Across evaluations on 12 LLMs, we observe a strong positive correlation between the solution diversity and Potential at k (a novel metric quantifying an LLM's reasoning potential) in high-performing models. This finding motivates our method to explicitly promote diversity during RL training. Specifically, we design a token-level diversity and reformulate it into a practical objective, then we selectively apply it to positive samples. Integrated into the R1-zero training framework, our method achieves a 3.5 percent average improvement across four mathematical reasoning benchmarks, while generating more diverse and robust solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2505_23433
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Diversity-Aware Policy Optimization for Large Language Model Reasoning
Yao, Jian
Cheng, Ran
Wu, Xingyu
Wu, Jibin
Tan, Kay Chen
Machine Learning
The reasoning capabilities of large language models (LLMs) have advanced rapidly, particularly following the release of DeepSeek R1, which has inspired a surge of research into data quality and reinforcement learning (RL) algorithms. Despite the pivotal role diversity plays in RL, its influence on LLM reasoning remains largely underexplored. To bridge this gap, this work presents a systematic investigation into the impact of diversity in RL-based training for LLM reasoning, and proposes a novel diversity-aware policy optimization method. Across evaluations on 12 LLMs, we observe a strong positive correlation between the solution diversity and Potential at k (a novel metric quantifying an LLM's reasoning potential) in high-performing models. This finding motivates our method to explicitly promote diversity during RL training. Specifically, we design a token-level diversity and reformulate it into a practical objective, then we selectively apply it to positive samples. Integrated into the R1-zero training framework, our method achieves a 3.5 percent average improvement across four mathematical reasoning benchmarks, while generating more diverse and robust solutions.
title Diversity-Aware Policy Optimization for Large Language Model Reasoning
topic Machine Learning
url https://arxiv.org/abs/2505.23433