青少年语言和新出现的诽谤:解决基于bert的仇恨言论检测中的偏见

Jan Fillies, Adrian Paschke
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引用次数: 0

摘要

随着越来越多的青少年和儿童上网,评估旨在保护他们免受身心伤害的算法至关重要。本研究在现有的基于bert的仇恨言论检测模型上测量了青少年语言中新出现的辱骂所带来的偏见。该研究建立了一个新的框架来识别训练网络中的语言偏见,引入了一种技术来检测新出现的仇恨短语,并评估与之相关的意外偏见。因此,构建了三个偏差测试集:一个用于新出现的仇恨言论术语,另一个用于已建立的仇恨术语,另一个用于测试过拟合。基于这些测试集,对三种科学和一种商业仇恨语音检测模型进行了评估和比较。为了进行综合评价,本研究引入了一种新颖的青少年语言偏见评分。最后,该研究应用微调作为青少年语言偏见的缓解策略,严格测试和评估新训练的分类器。总之,本研究引入了一种新的偏见检测框架,强调了青少年语言对分类器在仇恨言论分类中的表现的影响,并提出了第一个专门针对在线青少年语言训练的仇恨言论分类器。本研究仅关注仇恨言论中的诽谤,为该领域提供了基础视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Youth language and emerging slurs: tackling bias in BERT-based hate speech detection

With the increasing presence of adolescents and children online, it is crucial to evaluate algorithms designed to protect them from physical and mental harm. This study measures the bias introduced by emerging slurs found in youth language on existing BERT-based hate speech detection models. The research establishes a novel framework to identify language bias within trained networks, introducing a technique to detect emerging hate phrases and evaluate the unintended bias associated with them. As a result, three bias test sets are constructed: one for emerging hate speech terms, another for established hate terms, and one to test for overfitting. Based on these test sets, three scientific and one commercial hate speech detection models are assessed and compared. For comprehensive evaluation, the research introduces a novel Youth Language Bias Score. Finally, the study applies fine-tuning as a mitigation strategy for youth language bias, rigorously testing and evaluating the newly trained classifier. To summarize, the research introduces a novel framework for bias detection, highlights the influence of adolescent language on classifier performance in hate speech classification, and presents the first-ever hate speech classifier specifically trained for online youth language. This study focuses only on slurs in hateful speech, offering a foundational perspective for the field.

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