全球就业中的本土偏见

Chen Liang, Y. Hong, B. Gu
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引用次数: 2

摘要

我们研究了网络就业中的家乡偏见的本质,其中雇主更喜欢来自自己国家的工人。利用一个主要在线劳动力平台的独特大规模数据集,我们确定了雇主在其在线就业决策中的家乡偏见。此外,我们发现来自传统价值观较高、多样性较低、(用户)人口规模较小的国家的雇主往往具有更强的家乡偏见。此外,我们使用准自然实验来调查雇主的家乡偏见的性质,其中该平台引入了一个监控系统,以方便雇主跟踪工人在基于时间的项目中的进展。采用倾向得分匹配方法将可比固定价格项目作为对照组进行匹配后,我们的异中之差估计表明,在网络就业中确实存在家乡偏见,并且至少40.93%的家乡偏见是由统计歧视驱动的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Home Bias in Global Employment
We study the nature of home bias in online employment, wherein the employers prefer workers from their own home countries. Using a unique large-scale dataset from a major online labor platform, we identify employers’ home bias in their online employment decisions. Moreover, we find that employers from countries with high traditional values, lower diversity, and smaller (user) population size, tend to have a stronger home bias. Further, we investigate the nature of employers’ home bias using a quasi-natural experiment wherein the platform introduces a monitoring system to facilitate employers to keep track of workers’ progress in time-based projects. After matching comparable fixed-price projects as a control group using propensity score matching, our difference-in-difference estimations show that the home bias does exist in online employment, and at least 40.93% of home bias is driven by statistical discrimination.
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