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刻板印象如何阻碍女性在科学领域的职业发展。

How stereotypes impair women's careers in science.

机构信息

Columbia Business School, Columbia University, New York, NY 10027.

出版信息

Proc Natl Acad Sci U S A. 2014 Mar 25;111(12):4403-8. doi: 10.1073/pnas.1314788111. Epub 2014 Mar 10.

DOI:10.1073/pnas.1314788111
PMID:24616490
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3970474/
Abstract

Women outnumber men in undergraduate enrollments, but they are much less likely than men to major in mathematics or science or to choose a profession in these fields. This outcome often is attributed to the effects of negative sex-based stereotypes. We studied the effect of such stereotypes in an experimental market, where subjects were hired to perform an arithmetic task that, on average, both genders perform equally well. We find that without any information other than a candidate's appearance (which makes sex clear), both male and female subjects are twice more likely to hire a man than a woman. The discrimination survives if performance on the arithmetic task is self-reported, because men tend to boast about their performance, whereas women generally underreport it. The discrimination is reduced, but not eliminated, by providing full information about previous performance on the task. By using the Implicit Association Test, we show that implicit stereotypes are responsible for the initial average bias in sex-related beliefs and for a bias in updating expectations when performance information is self-reported. That is, employers biased against women are less likely to take into account the fact that men, on average, boast more than women about their future performance, leading to suboptimal hiring choices that remain biased in favor of men.

摘要

女性在本科生中的人数多于男性,但她们主修数学或科学专业,或选择这些领域的职业的可能性远远低于男性。这种结果通常归因于基于性别的负面刻板印象的影响。我们在一个实验市场中研究了这种刻板印象的影响,在这个市场中,被试者被雇用来执行一项平均来说两种性别都能很好完成的算术任务。我们发现,除了候选人的外貌(这表明了性别)之外,没有任何其他信息,男性和女性被试者雇佣男性的可能性是女性的两倍。如果仅根据自我报告的算术任务表现提供信息,那么这种歧视仍然存在,因为男性往往会吹嘘自己的表现,而女性则普遍会少报自己的表现。如果提供关于任务之前表现的完整信息,歧视会减少,但不会消除。通过使用内隐联想测验,我们表明内隐刻板印象是导致与性别相关的信念存在初始平均偏差的原因,也是在自我报告表现信息时更新期望的偏差的原因。也就是说,对女性有偏见的雇主不太可能考虑到这样一个事实,即男性平均来说比女性更吹嘘自己未来的表现,从而导致不理想的雇佣选择,这些选择仍然偏向于男性。