Addressing Biases in the Texts using an End-to-End Pipeline Approach

S. Raza, S. Bashir, Sneha, Urooj Qamar
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Abstract

The concept of fairness is gaining popularity in academia and industry. Social media is especially vulnerable to media biases and toxic language and comments. We propose a fair ML pipeline that takes a text as input and determines whether it contains biases and toxic content. Then, based on pre-trained word embeddings, it suggests a set of new words by substituting the bi-ased words, the idea is to lessen the effects of those biases by replacing them with alternative words. We compare our approach to existing fairness models to determine its effectiveness. The results show that our proposed pipeline can de-tect, identify, and mitigate biases in social media data
使用端到端管道方法解决文本中的偏差
公平的概念在学术界和产业界越来越受欢迎。社交媒体尤其容易受到媒体偏见、有毒语言和评论的影响。我们提出了一个公平的ML管道,它将文本作为输入,并确定它是否包含偏见和有毒内容。然后,在预先训练的词嵌入的基础上,它通过替换基于双基的词来建议一组新词,其想法是通过替换替代词来减少这些偏差的影响。我们将我们的方法与现有的公平模型进行比较,以确定其有效性。结果表明,我们提出的管道可以检测、识别和减轻社交媒体数据中的偏见
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