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Crafting Adversarial Examples for Neural Machine Translation

机译:制作神经机翻译的对抗性示例

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Effective adversary generation for neural machine translation (NMT) is a crucial prerequisite for building robust machine translation systems. In this work, we investigate veritable evaluations of NMT adversarial attacks, and propose a novel method to craft NMT adversarial examples. We first show the current NMT adversarial attacks may be improperly estimated by the commonly used mono-directional translation, and we propose to leverage the round-trip translation technique to build valid metrics for evaluating NMT adversarial attacks. Our intuition is that an effective NMT adversarial example, which imposes minor shifting on the source and degrades the translation dramatically, would naturally lead to a semantic-destroyed round-trip translation result. We then propose a promising black-box attack method called Word Saliency speedup Local Search (WSLS) that could effectively attack the mainstream NMT architectures. Comprehensive experiments demonstrate that the proposed metrics could accurately evaluate the attack effectiveness, and the proposed WSLS could significantly break the state-of-art NMT models with small perturbation. Besides. WSLS exhibits strong trans-ferability on attacking Baidu and Bing online translators.
机译:神经电机翻译(NMT)的有效婚姻发电是建立强大机器翻译系统的至关重要的先决条件。在这项工作中,我们研究了对NMT对抗性攻击的真相评估,并提出了一种新的方法来制作NMT对抗性实例。我们首先显示目前的NMT对抗性攻击可能被常用的单向翻译估计,并且建议利用往返翻译技术来构建评估NMT对抗性攻击的有效度量。我们的直觉是一个有效的NMT对抗性示例,它对来源施加了轻微的变化,从而急剧下降,自然会导致语义破坏的往返翻译结果。然后,我们提出了一个有前途的黑匣子攻击方法,称为Word Acsiency Speedup本地搜索(WSL),可以有效地攻击主流NMT架构。综合实验表明,拟议的指标可以准确评估攻击效果,拟议的WSL可以大大打破具有小扰动的最先进的NMT模型。除了。 WSLS在攻击百度和Bing在线翻译方面表现出强大的易碎性。

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