毒性检测中的环境敏感性估计

A. Xenos, John Pavlopoulos, Ion Androutsopoulos
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引用次数: 11

摘要

在当前的毒性检测数据集中,用户帖子的感知毒性取决于会话上下文是罕见的。因此,在当前数据集上训练的毒性检测器也会忽略上下文,这使得检测上下文敏感的毒性变得更加困难。我们构建并公开发布了一个包含10k个帖子的数据集,每个帖子有两种毒性标签,这些标签来自于将(i)当前帖子和前一个帖子作为上下文,或(ii)仅考虑当前帖子的注释者。我们引入了一个新的任务,上下文敏感性估计,其目的是识别如果也考虑上下文(以前的帖子),其感知毒性会发生变化的帖子。使用新的数据集,我们表明可以为这项任务开发系统。此类系统可用于增强毒性检测数据集,其中包含更多与上下文相关的帖子,或建议版主何时应考虑父帖子,这可能并不总是必要的,并且可能会带来额外的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context Sensitivity Estimation in Toxicity Detection
User posts whose perceived toxicity depends on the conversational context are rare in current toxicity detection datasets. Hence, toxicity detectors trained on current datasets will also disregard context, making the detection of context-sensitive toxicity a lot harder when it occurs. We constructed and publicly release a dataset of 10k posts with two kinds of toxicity labels per post, obtained from annotators who considered (i) both the current post and the previous one as context, or (ii) only the current post. We introduce a new task, context-sensitivity estimation, which aims to identify posts whose perceived toxicity changes if the context (previous post) is also considered. Using the new dataset, we show that systems can be developed for this task. Such systems could be used to enhance toxicity detection datasets with more context-dependent posts or to suggest when moderators should consider the parent posts, which may not always be necessary and may introduce additional costs.
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