Learning to Align, Aligning to Learn: A Unified Approach for Self-Optimized Alignment
Abstract
Alignment methodologies have emerged as a critical pathway for enhancing language model alignment capabilities. While SFT (supervised fine-tuning) accelerates convergence through direct token-level loss intervention, its efficacy is constrained by offline policy trajectory. In contrast, RL(reinforcement learning) facilitates exploratory policy optimization, but suffers from low sample efficiency and stringent dependency on high-quality base models. To address these dual challenges, we propose GRAO (Group Relative Alignment Optimization), a unified framework that synergizes the respective strengths of SFT and RL through three key innovations: 1) A multi-sample generation strategy enabling comparative quality assessment via reward feedback; 2) A novel Group Direct Alignment Loss formulation leveraging intra-group relative advantage weighting; 3) Reference-aware parameter updates guided by pairwise preference dynamics. Our theoretical analysis establishes GRAO's convergence guarantees and sample efficiency advantages over conventional approaches. Comprehensive evaluations across complex human alignment tasks demonstrate GRAO's superior performance, achieving 57.70\%,17.65\% 7.95\% and 5.18\% relative improvements over SFT, DPO, PPO and GRPO baselines respectively. This work provides both a theoretically grounded alignment framework and empirical evidence for efficient capability evolution in language models.
Cite
@article{arxiv.2508.07750,
title = {Learning to Align, Aligning to Learn: A Unified Approach for Self-Optimized Alignment},
author = {Haowen Wang and Yun Yue and Zhiling Ye and Shuowen Zhang and Lei Fan and Jiaxin Liang and Jiadi Jiang and Cheng Wei and Jingyuan Deng and Xudong Han and Ji Li and Chunxiao Guo and Peng Wei and Jian Wang and Jinjie Gu},
journal= {arXiv preprint arXiv:2508.07750},
year = {2025}
}
Comments
12 pages, 5 figures, 7 tables