数字时代的人口推断:使用神经网络大规模评估性别和种族

IF 8.9 2区 管理学 Q1 MANAGEMENT Organizational Research Methods Pub Date : 2023-06-14 DOI:10.1177/10944281231175904
Amal Chekili, Ivan Hernandez
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引用次数: 0

摘要

性别和种族是io心理学中越来越多的研究主题,有助于理解集体的组成,边缘化群体成员的经历,以及人口统计学结果的差异,并在更高层次上捕捉多样性。然而,由于缺乏明确的、结构化的、在线的人口统计信息,使得将这些研究问题应用于大数据源具有挑战性。我们强调如何使用深度神经网络来根据人们的姓名推断人口统计数据,这些数据通常在网上发现(例如,社交媒体简介,员工页面和会员名单),使用广泛的国际数据来训练和评估这些模型的有效性,并发现有效性系数满足个人层面的最小可靠性阈值(rgender =)。91,种族= .80),突出了他们在背景化和促进大数据研究方面的能力。利用从数据库、网站和移动应用程序中提取的经验数据,我们通过展示包含模型提供的信息的研究问题的说明性演示,强调了这些模型如何应用于大型组织数据集。为了促进更广泛的使用,我们提供了一个在线应用程序,可以从名字中推断人口统计数据,而不需要高级编程知识。
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Demographic Inference in the Digital Age: Using Neural Networks to Assess Gender and Ethnicity at Scale
Gender and ethnicity are increasingly studied topics within I-O psychology, helpful for understanding the composition of collectives, experiences of marginalized group members, and differences in outcomes between demographics and capturing diversity at higher levels. However, the absence of explicit, structured, demographic information online makes applying these research questions to Big Data sources challenging. We highlight how deep neural networks can be used to infer demographics based on people's names, which are commonly found online (e.g., social media profiles, employee pages, and membership rosters), using broad international data to train and evaluate the effectiveness of these models and find that validity coefficients meet minimum reliability thresholds at the individual level ( rgender  =  .91, rethnicity  =  .80) highlighting their ability to contextualize and facilitate Big Data research. Using empirical data extracted from databases, websites, and mobile apps, we highlight how these models can be applied to large organizational data sets by presenting illustrative demonstrations of research questions that incorporate the information provided by the model. To promote broader usage, we offer an online application to infer demographics from names without requiring advanced programming knowledge.
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来源期刊
CiteScore
23.20
自引率
3.20%
发文量
17
期刊介绍: Organizational Research Methods (ORM) was founded with the aim of introducing pertinent methodological advancements to researchers in organizational sciences. The objective of ORM is to promote the application of current and emerging methodologies to advance both theory and research practices. Articles are expected to be comprehensible to readers with a background consistent with the methodological and statistical training provided in contemporary organizational sciences doctoral programs. The text should be presented in a manner that facilitates accessibility. For instance, highly technical content should be placed in appendices, and authors are encouraged to include example data and computer code when relevant. Additionally, authors should explicitly outline how their contribution has the potential to advance organizational theory and research practice.
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