This paper presents our submission to SemEval-2021 Task 5: Toxic Spans Detection. The purpose of this task is to detect the spans that make a text toxic, which is a complex labour for several reasons. Firstly, because of the intrinsic subjectivity of toxicity, and secondly, due to toxicity not always coming from single words like insults or offends, but sometimes from whole expressions formed by words that may not be toxic individually. Following this idea of focusing on both single words and multi-word expressions, we study the impact of using a multi-depth DistilBERT model, which uses embeddings from different layers to estimate the final per-token toxicity. Our quantitative results show that using information from multiple depths boosts the performance of the model. Finally, we also analyze our best model qualitatively.
翻译:本文介绍我们提交SemEval-2021任务5:发现有毒螺旋体。本任务的目的是检测造成文本毒性的跨度,由于若干原因,这是一个复杂的工作。首先,由于毒性的内在主观性,第二,由于毒性并不总是来自侮辱或冒犯等单词,而有时来自可能不是单个毒性的单词组成的整个表达方式。根据这一侧重于单词和多词表达方式的理念,我们研究了使用多层的多层DuttilBERT模型的影响,该模型利用不同层的嵌入来估计最终的人均毒性。我们的定量结果显示,使用多层的信息可以提高模型的性能。最后,我们还分析了我们的最佳模型的质量。