招聘广告中的机器学习和年龄刻板印象:来自实验的证据

I. Burn, Daniel Firoozi, Daniel Ladd, D. Neumark
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引用次数: 3

摘要

我们使用机器学习方法来测量招聘广告语言与工业心理学家确定的年龄歧视刻板印象的语言相似性,以探索招聘广告中的年龄歧视刻板印象是否可以检测到。然后,我们进行了一项实验,以评估这种语言是否被认为是对年长员工的偏见。我们发现,被机器学习算法分类为与年龄歧视刻板印象密切相关的语言被实验对象视为年龄歧视。当通过奖励参与者猜测其他受访者对语言的评价来激励反应时,与年龄歧视刻板印象相关的语言得分会更高。这些方法可能有助于执行反歧视法,通过使用招聘广告来预测或识别更有可能从事年龄歧视的雇主。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and Perceived Age Stereotypes in Job Ads: Evidence from an Experiment
We explore whether ageist stereotypes in job ads are detectable using machine learning methods measuring the linguistic similarity of job-ad language to ageist stereotypes identified by industrial psychologists. We then conduct an experiment to evaluate whether this language is perceived as biased against older workers. We find that language classified by the machine learning algorithm as closely related to ageist stereotypes is perceived as ageist by experimental subjects. The scores assigned to the language related to ageist stereotypes are larger when responses are incentivized by rewarding participants for guessing how other respondents rated the language. These methods could potentially help enforce anti-discrimination laws by using job ads to predict or identify employers more likely to be engaging in age discrimination.
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