员工是否歧视他们的外群体雇主?证据来自网络平台经济

S. Asad, R. Banerjee, Joydeep Bhattacharya
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引用次数: 2

摘要

我们研究了在线劳动力市场中可能通过社会偏好表现出来的工人对雇主的歧视。具体来说,我们要问的是,相对于其他方面相同的、同种族的雇主,员工是否会对非种族雇主表现出积极的社会偏好?我们进行了一项强大的、基于模型的实验,从亚马逊的M-Turk平台上招募了6000名员工,让他们完成一项真实的任务,并随机(不引人注目地)向他们透露他们真实雇主的种族身份。引人注目的是,我们发现了基于种族的利他主义的有力证据——白人工人,即使他们个人没有受益,也会相对努力地工作,为黑人雇主创造更多的收入。与民主党人相比,自称为白人的共和党人和无党派人士明显表现出更多的利他主义。值得注意的是,利他主义似乎并不是由对雇主收入状况的种族特定信念驱动的。我们的研究结果表明,白人对黑人的亲社会行为,在传统劳动力市场中是不典型的,可能会出现在零工经济中,在零工经济中,由于有限的社会接触,联想(厌恶)味道自然减弱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Do workers discriminate against their out-group employers? Evidence from an online platform economy
We study possible worker-to-employer discrimination manifested via social preferences in an online labor market. Specifically, we ask, do workers exhibit positive social preferences for an out-race employer relative to an otherwise-identical, own-race one? We run a well-powered, model-based experiment wherein we recruit 6,000 workers from Amazon's M-Turk platform for a real-effort task and randomly (and unobtrusively) reveal to them the racial identity of their non-fictitious employer. Strikingly, we find strong evidence of race-based altruism – white workers, even when they do not benefit personally, work relatively harder to generate more income for black employers. Self-declared white Republicans and Independents exhibit significantly more altruism relative to Democrats. Notably, the altruism does not seem to be driven by race-specific beliefs about the income status of the employers. Our results suggest the possibility that pro-social behavior of whites toward blacks, atypical in traditional labor markets, may emerge in the gig economy where associative (dis)taste is naturally muted due to limited social contact.
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