However, current autoregressive approaches suffer from high latency. In this paper, we focus on non-autoregressive translation (NAT) for this problem for its efficiency advantage. We identify that current constrained NAT models, which are based on iterative editing, do not handle low-frequency constraints well. To this end, we propose a plug-in algorithm for this line of work, i.e., Aligned Constrained Training (ACT), which alleviates this problem by familiarizing the model with the source-side context of the constraints. Experiments on the general and domain datasets show that our model improves over the backbone constrained NAT model in constraint preservation and translation quality, especially for rare constraints.
翻译:然而,当前的自动递减方法存在高度的延迟性。 在本文中,我们注重非自动递减翻译,以提高效率。我们发现,基于迭接编辑的当前受限制的NAT模型并不能很好地处理低频限制。为此,我们提议对这一工作线采用插座算法,即统一控制培训(ACT ), 使模型熟悉限制的来源方背景,从而缓解了这一问题。 对普通和域域数据集的实验显示,我们的模型在制约保护和翻译质量方面,特别是在罕见的限制方面,比受主干线限制的NAT模型有所改进。