UniBO @ AMI: A Multi-Class Approach to Misogyny and Aggressiveness Identification on Twitter Posts Using AlBERTo

Arianna Muti, Alberto Barrón-Cedeño
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引用次数: 7

Abstract

We describe our participation in the EVALITA 2020 (Basile et al., 2020) shared task on Automatic Misogyny Identification. We focus on task A —Misogyny and Aggressive Behaviour Identification— which aims at detecting whether a tweet in Italian is misogynous and, if so, whether it is aggressive. Rather than building two different models, one for misogyny and one for aggressiveness identification, we handle the problem as one single multi-label classification task, considering three classes: nonmisogynous, non-aggressive misogynous, and aggressive misogynous. Our threeclass supervised model, built on top of AlBERTo, obtains an overall F1 score of 0.7438 on the task test set (F1 = 0.8102 for the misogyny and F1 = 0.6774 for the aggressiveness task), which outperforms the top submitted model (F1 = 0.7406).1
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UniBO @ AMI:使用AlBERTo在Twitter帖子中识别厌女症和攻击性的多类方法
我们描述了我们参与EVALITA 2020 (Basile et al., 2020)关于厌女症自动识别的共享任务。我们专注于任务A——厌女症和攻击性行为识别——旨在检测意大利语的推文是否厌女症,如果是,是否具有攻击性。我们没有建立两个不同的模型,一个用于厌女症,一个用于攻击性识别,而是将这个问题作为一个单一的多标签分类任务来处理,考虑了三个类别:非厌女症、非攻击性厌女症和攻击性厌女症。我们基于AlBERTo构建的三类监督模型在任务测试集上获得了0.7438的总F1分数(厌女任务F1 = 0.8102,攻击性任务F1 = 0.6774),优于最高提交的模型(F1 = 0.7406)
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DIACR-Ita @ EVALITA2020: Overview of the EVALITA2020 Diachronic Lexical Semantics (DIACR-Ita) Task QMUL-SDS @ DIACR-Ita: Evaluating Unsupervised Diachronic Lexical Semantics Classification in Italian (short paper) By1510 @ HaSpeeDe 2: Identification of Hate Speech for Italian Language in Social Media Data (short paper) HaSpeeDe 2 @ EVALITA2020: Overview of the EVALITA 2020 Hate Speech Detection Task KIPoS @ EVALITA2020: Overview of the Task on KIParla Part of Speech Tagging
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