UniParma at SemEval-2021 Task 5: Toxic Spans Detection Using CharacterBERT and Bag-of-Words Model

Akbar Karimi, L. Rossi, A. Prati
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引用次数: 4

Abstract

With the ever-increasing availability of digital information, toxic content is also on the rise. Therefore, the detection of this type of language is of paramount importance. We tackle this problem utilizing a combination of a state-of-the-art pre-trained language model (CharacterBERT) and a traditional bag-of-words technique. Since the content is full of toxic words that have not been written according to their dictionary spelling, attendance to individual characters is crucial. Therefore, we use CharacterBERT to extract features based on the word characters. It consists of a CharacterCNN module that learns character embeddings from the context. These are, then, fed into the well-known BERT architecture. The bag-of-words method, on the other hand, further improves upon that by making sure that some frequently used toxic words get labeled accordingly. With a ∼4 percent difference from the first team, our system ranked 36 th in the competition. The code is available for further research and reproduction of the results.
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UniParma在SemEval-2021任务5:使用CharacterBERT和Bag-of-Words模型检测毒性跨度
随着数字信息的日益普及,有毒内容也在不断增加。因此,对这类语言的检测是至关重要的。我们利用最先进的预训练语言模型(CharacterBERT)和传统的词袋技术相结合来解决这个问题。由于内容中充满了不符合字典拼写的有毒单词,因此关注单个字符至关重要。因此,我们使用CharacterBERT来提取基于单词字符的特征。它由一个CharacterCNN模块组成,该模块从上下文中学习字符嵌入。然后,将这些输入到众所周知的BERT架构中。另一方面,词袋法进一步改进了这一方法,确保一些经常使用的有害词汇得到相应的标签。与第1队的差距为4%,排在第36位。该代码可用于进一步研究和复制结果。
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