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Gender and Racial Fairness in Depression Research using Social Media

机译:使用社交媒体的抑郁症研究中的性别和种族公平

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Multiple studies have demonstrated that behavior on internet-based social media platforms can be indicative of an individual's mental health status. The widespread availability of such data has spurred interest in mental health research from a computational lens. While previous research has raised concerns about possible biases in models produced from this data, no study has quantified how these biases actually manifest themselves with respect to different demographic groups, such as gender and racial/ethnic groups. Here, we analyze the fairness of depression classifiers trained on Twitter data with respect to gender and racial demographic groups. We find that model performance systematically differs for underrep-resented groups and that these discrepancies cannot be fully explained by trivial data representation issues. Our study concludes with recommendations on how to avoid these biases in future research.
机译:多项研究表明,基于互联网的社交媒体平台上的行为可以表明个人的心理健康状况。 此类数据的广泛可用性对计算镜头的心理健康研究感到兴趣。 虽然以前的研究提出了对由该数据产生的模型中可能的偏差的担忧,但没有测量这些偏差如何实际上表现出对不同人物和种族/民族的不同人群群体。 在这里,我们分析了关于性别和种族人口统计群体的推特数据训练的抑郁分类机的公平性。 我们发现模型性能系统地不同于弱势困难的群体,并且无法通过琐碎的数据表示问题充分解释这些差异。 我们的研究结论是关于如何在未来研究中避免这些偏见的建议。

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