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EFSG: Evolutionary Fooling Sentences Generator

机译:EFSG:进化愚弄句子生成器

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Large pre-trained language representation models (LMs) have recently collected a huge number of successes in many NLP tasks. In 2018 BERT, and later its successors (e.g. RoBERTa), obtained state-of-the-art results in classical benchmark tasks, such as GLUE. Works about adversarial attacks have been published to test their generalization proprieties and robustness. In this study, we propose Evolutionary Fooling Sentences Generator (EFSG), a black-box task-agnostic adversarial attack algorithm designed in an evolutionary fashion to generate false-positive sentences for binary classification tasks. We successfully apply EFSG to single-sentence (CoLA) and sentence-pair (MRPC) classification tasks, on BERT and RoBERTa. Results prove the presence of weak spots in state-of-the-art LMs. To complete the analysis, we perform transferability tests and ablation study. Finally, adversarial training helps as a data augmentation defence approach against EFSG, obtaining stronger improved models with no loss of accuracy.
机译:大型预训练的语言表示模型(LMS)最近收集了许多NLP任务中的大量成功。 2018年BERT,后来其继承者(例如Roberta),获得最先进的基准任务,如胶水。关于对抗性攻击的作品已发布以测试其泛化礼物和鲁棒性。在这项研究中,我们提出了进化的愚蠢判决发生器(EFSG),是一种以进化方式设计的黑匣子任务 - 不可原谅的攻击算法,为二进制分类任务产生虚假派句。我们成功将EFSG应用于单句(可乐)和句子对(MRPC)分类任务,在BERT和Roberta上。结果证明了最先进的LMS中薄弱的存在。为了完成分析,我们执行转移性测试和消融研究。最后,对抗培训有助于反对EFSG的数据增强防御方法,获得更强的改进模型,没有准确性损失。

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