Jun Xie
2020
A Reinforced Generation of Adversarial Examples for Neural Machine Translation
wei zou
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Shujian Huang
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Jun Xie
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Xinyu Dai
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Jiajun CHEN
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
Neural machine translation systems tend to fail on less decent inputs despite its significant efficacy, which may significantly harm the credibility of these systems—fathoming how and when neural-based systems fail in such cases is critical for industrial maintenance. Instead of collecting and analyzing bad cases using limited handcrafted error features, here we investigate this issue by generating adversarial examples via a new paradigm based on reinforcement learning. Our paradigm could expose pitfalls for a given performance metric, e.g., BLEU, and could target any given neural machine translation architecture. We conduct experiments of adversarial attacks on two mainstream neural machine translation architectures, RNN-search, and Transformer. The results show that our method efficiently produces stable attacks with meaning-preserving adversarial examples. We also present a qualitative and quantitative analysis for the preference pattern of the attack, demonstrating its capability of pitfall exposure.
Improving Event Detection via Open-domain Trigger Knowledge
Meihan Tong
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Bin Xu
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Shuai Wang
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Yixin Cao
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Lei Hou
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Juanzi Li
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Jun Xie
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
Event Detection (ED) is a fundamental task in automatically structuring texts. Due to the small scale of training data, previous methods perform poorly on unseen/sparsely labeled trigger words and are prone to overfitting densely labeled trigger words. To address the issue, we propose a novel Enrichment Knowledge Distillation (EKD) model to leverage external open-domain trigger knowledge to reduce the in-built biases to frequent trigger words in annotations. Experiments on benchmark ACE2005 show that our model outperforms nine strong baselines, is especially effective for unseen/sparsely labeled trigger words. The source code is released on https://github.com/shuaiwa16/ekd.git.
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Co-authors
- wei zou 1
- Shujian Huang 1
- Xinyu Dai 1
- Jiajun CHEN 1
- Meihan Tong 1
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Venues
- ACL2