When Transparency Fails: Bias and Financial Incentives in Ridesharing Platforms

Jorge Mejia, Chris Parker
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引用次数: 49

Abstract

Providing transparency into operational processes can change consumer and worker behavior. However, it is unclear whether operational transparency is beneficial with potentially biased service providers. We explore this in the context of ridesharing platforms where early evidence documents bias similar to what has been observed in traditional transportation systems. Platforms responded by reducing operational transparency through removing information about riders’ gender and race from the ride request presented to drivers. However, following this change, bias may still manifest through driver cancelation after a request is accepted, at which point the rider’s picture is displayed. Our primary research question is to what extent a rider’s gender, race, and perception of support for lesbian, gay, bisexual, and transgender (LGBT) rights impact cancelation rates. We investigate this through a large field experiment on a major ridesharing platform in Washington, DC. By manipulating rider names and profile pictures, we observe drivers’ behavior patterns in accepting and canceling rides. Our results confirm that bias at the ride request stage has been eliminated. However, after acceptance, racial and LGBT biases are persistent, while we find no evidence of gender biases. We also explore whether peak times moderate (through increased pay to drivers) or exacerbate (by signaling that there are many riders, allowing drivers to be more selective) these biases. We find a moderating effect of peak timing, with lower cancelation rates for non-Caucasian riders. We do not find a similar moderating effect for riders that signal support for the LGBT community. This paper was accepted by Vishal Gaur, operations management.
当透明度失败时:拼车平台的偏见和财务激励
为操作流程提供透明度可以改变消费者和工作人员的行为。然而,目前尚不清楚运营透明度是否对可能存在偏见的服务提供商有利。我们在拼车平台的背景下探讨了这一点,早期的证据记录了与传统交通系统中观察到的类似的偏见。作为回应,平台通过从提交给司机的乘车请求中删除有关乘客性别和种族的信息来降低运营透明度。然而,在此更改之后,在接受请求后,驾驶员取消可能仍然会表现出偏见,此时驾驶员的照片会显示出来。我们的主要研究问题是骑手的性别、种族以及对女同性恋、男同性恋、双性恋和变性人(LGBT)权利的支持程度对取消率有多大影响。我们通过在华盛顿特区的一个主要拼车平台上进行的大型现场实验来调查这一点。通过操纵乘客姓名和头像,我们观察了司机接受和取消乘车的行为模式。我们的结果证实,在乘车请求阶段的偏见已被消除。然而,在接受之后,种族和LGBT偏见持续存在,而我们没有发现性别偏见的证据。我们还探讨了高峰时段是缓和(通过增加司机的工资)还是加剧(通过发出有很多乘客的信号,让司机更有选择性)这些偏见。我们发现高峰时段的调节作用,非白人乘客的取消率较低。我们没有发现对支持LGBT群体的乘客有类似的调节作用。本文被运营管理专业的Vishal Gaur接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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