反推特:生态语境下在线反言论的意大利语语料库

Pierpaolo Goffredo, Valerio Basile, B. Cepollaro, V. Patti
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引用次数: 3

摘要

这项工作描述了创建一个Twitter对话语料库的过程,该语料库对与性别歧视、种族主义和同性恋恐惧症相关的歧视相关的有毒言论进行了注释,以应对反言论的存在。主要的新颖之处在于一个带注释的数据集,该数据集包含发生上下文中的相关tweet。语料库由不同的个人资料捕获的tweet和回复组成,这些个人资料回复歧视性内容或令人反感的措辞新闻。提出了一种标注方案,明确了有毒言语和反言语维度上的知识。还包括对收集和注释的数据以及在注释过程中出现的IAA的分析。此外,我们报告了基于新数据集训练的监督式自动学习模型的自动反语音检测的初步实验。结果突出了上下文在此检测任务中所起的基本作用,证实了我们关于在其发生上下文中收集tweet的重要性的直觉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Counter-TWIT: An Italian Corpus for Online Counterspeech in Ecological Contexts
This work describes the process of creating a corpus of Twitter conversations annotated for the presence of counterspeech in response to toxic speech related to axes of discrimination linked to sexism, racism and homophobia. The main novelty is an annotated dataset comprising relevant tweets in their context of occurrence. The corpus is made up of tweets and responses captured by different profiles replying to discriminatory content or objectionably couched news. An annotation scheme was created to make explicit the knowledge on the dimensions of toxic speech and counterspeech.An analysis of the collected and annotated data and of the IAA that emerged during the annotation process is included. Moreover, we report about preliminary experiments on automatic counterspeech detection, based on supervised automatic learning models trained on the new dataset. The results highlight the fundamental role played by the context in this detection task, confirming our intuitions about the importance to collect tweets in their context of occurrence.
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