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推荐计算机科学和数据科学硕士项目的推荐信中的性别和文化偏见。

Gender and culture bias in letters of recommendation for computer science and data science masters programs.

机构信息

Computer and Information Sciences Department, Fordham University, 113 W 60th St, New York, NY, 10023, USA.

出版信息

Sci Rep. 2023 Sep 1;13(1):14367. doi: 10.1038/s41598-023-41564-w.

Abstract

Letters of Recommendation (LORs) are widely utilized for admission to both undergraduate and graduate programs, and are becoming even more important with the decreasing role that standardized tests play in the admissions process. However, LORs are highly subjective and thus can inject recommender bias into the process, leading to an inequitable evaluation of the candidates' competitiveness and competence. Our study utilizes natural language processing methods and manually determined ratings to investigate gender and cultural differences and biases in LORs written for STEM Master's program applicants. We generate features to measure important characteristics of the LORs and then compare these characteristics across groups based on recommender gender, applicant gender, and applicant country of origin. One set of features, which measure the underlying sentiment, tone, and emotions associated with each LOR, is automatically generated using IBM Watson's Natural Language Understanding (NLU) service. The second set of features is measured manually by our research team and quantifies the relevance, specificity, and positivity of each LOR. We identify and discuss features that exhibit statistically significant differences across gender and culture study groups. Our analysis is based on approximately 4000 applications for the MS in Data Science and MS in Computer Science programs at Fordham University. To our knowledge, no similar study has been performed on these graduate programs.

摘要

推荐信(LORs)广泛用于本科和研究生课程的录取,并且随着标准化考试在录取过程中的作用降低,它们变得更加重要。然而,LORs 非常主观,因此可能会在推荐过程中注入推荐者的偏见,从而导致对候选人竞争力和能力的不公平评估。我们的研究使用自然语言处理方法和手动确定的评分来调查 STEM 硕士课程申请人的 LOR 中的性别和文化差异和偏见。我们生成用于衡量 LOR 重要特征的特征,然后根据推荐者的性别、申请人的性别和申请人的原籍国,在组之间比较这些特征。一组特征使用 IBM Watson 的自然语言理解(NLU)服务自动生成,用于衡量每个 LOR 相关的潜在情感、语气和情绪。第二组特征由我们的研究团队手动测量,量化每个 LOR 的相关性、特异性和积极性。我们确定并讨论了在性别和文化研究组之间表现出统计学显著差异的特征。我们的分析基于大约 4000 份福特汉姆大学数据科学硕士和计算机科学硕士课程的申请。据我们所知,还没有针对这些研究生课程进行类似的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c2fb/10474141/fd44fe21e930/41598_2023_41564_Fig1_HTML.jpg

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