通过去伪存真辅助深度生成模型和性别加权抽样加强简历职位匹配中的性别平等

Swati Tyagi , Anuj , Wei Qian , Jiaheng Xie , Rick Andrews
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引用次数: 0

摘要

我们的工作旨在减轻词嵌入中的性别偏见,并研究这些调整对提高简历职位匹配问题公平性的影响。通过对简历数据进行案例研究,我们探索了工作分类中普遍存在的性别偏见--这是实现职业机会平等的重要障碍,尤其是在机器学习应用中。本研究仔细研究了工作分配中的偏差表征是如何受各种因素(如各种语义框架中的技能和简历描述符)的影响而影响分类过程的。我们的研究结果表明,分类真阳性率中的性别差异与各职业中的性别失衡之间存在显著的相关性,而性别失衡可能会加深这些差异。本研究的目标是:(1) 通过去伪存真辅助深度生成建模方法,减轻词嵌入层面的偏差,从而促进更公平和性别公正的向量表示;(2) 评估由此对职位分类公平性产生的影响;(3) 探索实施性别加权抽样技术,以便在存在性别失衡的情况下,在不同职位类别中实现更均衡的性别表示。这种方法是在将数据输入分类器模型之前,根据性别修改数据分布,旨在确保机会均等,促进职业分类中的性别公平。本文的代码可在 GitHub 上公开获取。
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Enhancing gender equity in resume job matching via debiasing-assisted deep generative model and gender-weighted sampling
Our work aims to mitigate gender bias within word embeddings and investigates the effects of these adjustments on enhancing fairness in resume job-matching problems. By conducting a case study on resume data, we explore the prevalence of gender bias in job categorization—a significant barrier to equal career opportunities, particularly in the context of machine learning applications. This study scrutinizes how biased representations in job assignments, influenced by a variety of factors such as skills and resume descriptors within diverse semantic frameworks, affect the classification process. The investigation extends to the nuanced language of resumes and the presence of subtle gender biases, including the employment of gender-associated terms, and examines how these terms’ vector representations can skew fairness, leading to a disproportionate mapping of resumes to job categories based on gender.
Our findings reveal a significant correlation between gender discrepancies in classification true positive rate and gender imbalances across professions that potentially deepen these disparities. The goal of this study is to (1) mitigate bias at the level of word embeddings via a debiasing-assisted deep generative modeling approach, thereby fostering more equitable and gender-fair vector representations; (2) evaluate the resultant impact on the fairness of job classification; (3) explore the implementation of a gender-weighted sampling technique to achieve a more balanced representation of genders across various job categories when such an imbalance exists. This approach involves modifying the data distribution according to gender before it is input into the classifier model, aiming to ensure equal opportunity and promote gender fairness in occupational classifications. The code for this paper is publicly available on GitHub.
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