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Unbiased Dynamic Pruning for Efficient Group-Based Policy Optimization

Machine Learning 2026-03-05 v1 Artificial Intelligence

Abstract

Group Relative Policy Optimization (GRPO) effectively scales LLM reasoning but incurs prohibitive computational costs due to its extensive group-based sampling requirement. While recent selective data utilization methods can mitigate this overhead, they could induce estimation bias by altering the underlying sampling distribution, compromising theoretical rigor and convergence behavior. To address this limitation, we propose Dynamic Pruning Policy Optimization (DPPO), a framework that enables dynamic pruning while preserving unbiased gradient estimation through importance sampling-based correction. By incorporating mathematically derived rescaling factors, DPPO significantly accelerates GRPO training without altering the optimization objective of the full-batch baseline. Furthermore, to mitigate the data sparsity induced by pruning, we introduce Dense Prompt Packing, a window-based greedy strategy that maximizes valid token density and hardware utilization. Extensive experiments demonstrate that DPPO consistently accelerates training across diverse models and benchmarks. For instance, on Qwen3-4B trained on MATH, DPPO achieves 2.37×\times training speedup and outperforms GRPO by 3.36% in average accuracy across six mathematical reasoning benchmarks.

Keywords

Cite

@article{arxiv.2603.04135,
  title  = {Unbiased Dynamic Pruning for Efficient Group-Based Policy Optimization},
  author = {Haodong Zhu and Yangyang Ren and Yanjing Li and Mingbao Lin and Linlin Yang and Xuhui Liu and Xiantong Zhen and Haiguang Liu and Baochang Zhang},
  journal= {arXiv preprint arXiv:2603.04135},
  year   = {2026}
}

Comments

20 pages, 4 figures

R2 v1 2026-07-01T11:03:10.160Z