Generating adversarial examples for Neural Machine Translation (NMT) with single Round-Trip Translation (RTT) has achieved promising results by releasing the meaning-preserving restriction. However, a potential pitfall for this approach is that we cannot decide whether the generated examples are adversarial to the target NMT model or the auxiliary backward one, as the reconstruction error through the RTT can be related to either. To remedy this problem, we propose a new criterion for NMT adversarial examples based on the Doubly Round-Trip Translation (DRTT). Specifically, apart from the source-target-source RTT, we also consider the target-source-target one, which is utilized to pick out the authentic adversarial examples for the target NMT model. Additionally, to enhance the robustness of the NMT model, we introduce the masked language models to construct bilingual adversarial pairs based on DRTT, which are used to train the NMT model directly. Extensive experiments on both the clean and noisy test sets (including the artificial and natural noise) show that our approach substantially improves the robustness of NMT models.
翻译:为了纠正这一问题,我们根据Doubly圆形翻译(RTT)提出了NMT对抗性辩论范例的新标准。具体地说,除了源源目标源RTT外,我们还考虑目标源目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标,但为了加强NMT模式的稳健性目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标、目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标目标