Adversarial Perturbations Augmented Language Models for Euphemism Identification

Guneet Singh Kohli, Prabsimran Kaur, Jatin Bedi
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引用次数: 1

Abstract

Euphemisms are mild words or expressions used instead of harsh or direct words while talking to someone to avoid discussing something unpleasant, embarrassing, or offensive. However, they are often ambiguous, thus making it a challenging task. The Third Workshop on Figurative Language Processing, colocated with EMNLP 2022 organized a shared task on Euphemism Detection to better understand euphemisms. We have used the adversarial augmentation technique to construct new data. This augmented data was then trained using two language models: BERT and longformer. To further enhance the overall performance, various combinations of the results obtained using longformer and BERT were passed through a voting ensembler. We achieved an F1 score of 71.5 using the combination of two adversarial longformers, two adversarial BERT, and one non-adversarial BERT.
对抗性扰动增强语言模型在委婉语识别中的应用
委婉语是指在与人交谈时使用温和的词语或表达,以避免讨论不愉快、尴尬或冒犯的事情,而不是使用严厉或直接的词语。然而,它们往往是模棱两可的,因此使它成为一项具有挑战性的任务。第三届比喻语言处理研讨会与EMNLP 2022相结合,组织了关于委婉语检测的共享任务,以更好地理解委婉语。我们使用了对抗性增强技术来构造新的数据。然后使用两种语言模型训练这些增强的数据:BERT和longformer。为了进一步提高整体性能,使用longformer和BERT获得的结果的各种组合通过投票集成器进行传递。我们通过使用两个对抗性长形、两个对抗性BERT和一个非对抗性BERT的组合获得了71.5的F1分数。
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