基于神经情景控制的低资源神经机器翻译

Nier Wu, H. Hou, Shuo Sun, Wei Zheng
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引用次数: 0

摘要

强化学习(RL)已被证明可以缓解神经机器翻译(NMT)训练评估中的度量不一致和暴露偏差,但样本效率受到采样方法(时间差(TD)或蒙特卡罗(MC))的限制,并且仍然无法补偿由于数据集不足而导致的非零奖励效率低下。此外,强化学习奖励只有在模型参数基本确定的情况下才能有效。为此,我们提出了情景控制强化学习方法,通过知识转移获得参数基本确定的模型,并通过引入半表格可微神经字典(DND)记录历史动作轨迹,模型在更新策略时能够根据样本奖励快速逼近真实状态值。在CCMT2019蒙汉(Mo-Zh)、藏汉(Ti-Zh)和维吾尔汉(Ug-Zh)任务上进行验证,结果表明质量显著提高,充分证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-Resource Neural Machine Translation with Neural Episodic Control
Reinforcement Learning (RL) has been proved to alleviate metric inconsistency and exposure deviation in training-evaluation of neural machine translation (NMT), but the sample efficiency is limited by sampling methods (Temporal-Difference (TD) or Monte-Carlo (MC)), and still cannot compensate for the inefficient non-zero rewards caused by insufficient data sets. In addition, RL rewards can only be effective when the model parameters are basically determined. Therefore, we proposed episodic control reinforcement learning method, which obtains the model with basically determined parameters through the knowledge transfer, and records the historical action trajectory by introducing semi-tabular differentiable neural dictionary (DND), the model can quickly approximate the real state-value according to samples reward when updating policy. We verified on CCMT2019 Mongolian-Chinese (Mo-Zh), Tibetan-Chinese (Ti-Zh), and Uyghur-Chinese (Ug-Zh) tasks, and the results showed that the quality was significantly improved, which fully demonstrated the effectiveness of the method.
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