ESRL: Efficient Sampling-based Reinforcement Learning for Sequence Generation
This work addresses efficiency issues in RL for sequence generation tasks like machine translation and RLHF, offering incremental improvements in sampling methods.
The paper tackles the computational challenge of large-scale sampling in reinforcement learning for sequence generation by introducing two-stage and dynamic sampling approaches, resulting in improved training efficiency and memory consumption while outperforming strong baselines like REINFORCE and proximal policy optimization.
Applying Reinforcement Learning (RL) to sequence generation models enables the direct optimization of long-term rewards (\textit{e.g.,} BLEU and human feedback), but typically requires large-scale sampling over a space of action sequences. This is a computational challenge as presented by the practice of sequence generation problems, such as machine translation, where we often deal with a large action space (\textit{e.g.,} a vocabulary) and a long action sequence (\textit{e.g.,} a translation). In this work, we introduce two-stage sampling and dynamic sampling approaches to improve the sampling efficiency during training sequence generation models via RL. We experiment with our approaches on the traditional sequence generation tasks, including machine translation and abstractive summarization. Furthermore, we evaluate our approaches in RL from human feedback (RLHF) through training a large language model using the reward model. Experimental results show that the efficient sampling-based RL, referred to as ESRL, can outperform all baselines in terms of both training efficiency and memory consumption. Notably, ESRL yields consistent performance gains over the strong REINFORCE, minimum risk training, and proximal policy optimization methods.