利用三重损失提高序列标记模型对排版对抗示例的鲁棒性

IF 2.3 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Natural Language Engineering Pub Date : 2022-02-04 DOI:10.1017/s1351324921000486
Can Udomcharoenchaikit, P. Boonkwan, P. Vateekul
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引用次数: 0

摘要

自然语言处理(NLP)中的许多基本任务,如词性标注、文本分块和命名实体识别,都可以表述为序列标注问题。尽管神经序列标记模型在标准测试集上显示了出色的结果,但当出现拼写错误的文本时,它们非常脆弱。在本文中,我们引入了一个对抗训练框架,以增强对排版对抗示例的鲁棒性。我们评估序列标记模型的鲁棒性与一个对抗的评估方案,其中包括排版对抗的例子。我们生成了两种类型的对抗性示例,没有访问(黑盒)或完全访问(白盒)目标模型的参数。我们对三种语言(英语、泰语和德语)进行了一系列广泛的实验,涉及三个序列标记任务。实验表明,提出的对抗性训练框架在所有任务上都具有更好的抗对抗性。我们发现通过加入三元组损失约束可以进一步提高模型在分块任务上的鲁棒性。
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Towards improving the robustness of sequential labeling models against typographical adversarial examples using triplet loss
Many fundamentaltasks in natural language processing (NLP) such as part-of-speech tagging, text chunking, and named-entity recognition can be formulated as sequence labeling problems. Although neural sequence labeling models have shown excellent results on standard test sets, they are very brittle when presented with misspelled texts. In this paper, we introduce an adversarial training framework that enhances the robustness against typographical adversarial examples. We evaluate the robustness of sequence labeling models with an adversarial evaluation scheme that includes typographical adversarial examples. We generate two types of adversarial examples without access (black-box) or with full access (white-box) to the target model’s parameters. We conducted a series of extensive experiments on three languages (English, Thai, and German) across three sequence labeling tasks. Experiments show that the proposed adversarial training framework provides better resistance against adversarial examples on all tasks. We found that we can further improve the model’s robustness on the chunking task by including a triplet loss constraint.
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来源期刊
Natural Language Engineering
Natural Language Engineering COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
5.90
自引率
12.00%
发文量
60
审稿时长
>12 weeks
期刊介绍: Natural Language Engineering meets the needs of professionals and researchers working in all areas of computerised language processing, whether from the perspective of theoretical or descriptive linguistics, lexicology, computer science or engineering. Its aim is to bridge the gap between traditional computational linguistics research and the implementation of practical applications with potential real-world use. As well as publishing research articles on a broad range of topics - from text analysis, machine translation, information retrieval and speech analysis and generation to integrated systems and multi modal interfaces - it also publishes special issues on specific areas and technologies within these topics, an industry watch column and book reviews.
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