基于机器翻译数据的仇恨语音检测:标注方案、类不平衡和欠采样的作用

Camilla Casula, Sara Tonelli
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引用次数: 3

摘要

虽然在处理资源较少的语言时,使用机器翻译的数据进行监督训练可以缓解数据稀疏性问题,但重要的是源数据不仅要正确翻译,而且要遵循与目标语言中较小的数据集相同的注释方案和可能的类平衡。因此,我们使用机器翻译的英语数据对意大利语中的仇恨言论检测进行了评估,并比较了三种设置,以了解训练规模、类别分布和注释方案的影响
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hate Speech Detection with Machine-Translated Data: The Role of Annotation Scheme, Class Imbalance and Undersampling
While using machine-translated data for supervised training can alleviate data sparseness problems when dealing with less-resourced languages, it is important that the source data are not only correctly translated, but also follow the same annotation scheme and possibly class balance as the smaller dataset in the target language. We therefore present an evaluation of hate speech detection in Italian using machine-translated data from English and comparing three settings, in order to understand the impact of training size, class distribution and annotation scheme.1
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