通过个人数据管理工作:日内瓦优步司机案例

Q2 Computer Science
Jessica Pidoux, Paul-Olivier Dehaye, Jacob Gursky
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引用次数: 0

摘要

本文以人种学方法介绍了非政府组织 PersonalData.IO 和 Hestia.ai 公司开展的宣传活动,该活动旨在利用《欧盟通用数据保护条例》,通过数据访问权帮助临时工重新获得个人数据,从而增强他们的权能。该项目以日内瓦优步司机的案例研究为基础,对全球的零工经济具有借鉴意义。司机以前是自营职业者,现在被归类为雇员,他们的工作时间和收入必须根据当地劳动法计算。我们从基础设施的角度出发,关注通过个人数据进行问责的参与式方法,从而为有关打车平台算法管理的讨论做出贡献。首先,我们关注个人数据保护与算法管理之间的关系,以理解打车平台对工人生产资料(即其个人数据)的支配。为了实现算法问责,我们提供了 Uber 数据结构的实证透明度。这些结构被用于他们的激增定价算法,并最终管理着劳动力。其次,在集体治理过程中,我们建立了参与式工具和方法,以增强临时工和数据科学家的能力。这些计算收入和工作的方法明确了工作的新社会意义,即 "乘车之间的损失时间"。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Governing work through personal data: The case of Uber drivers in Geneva
This article presents an ethnographic account of the advocacy initiative, conducted by NGO PersonalData.IO and the company Hestia.ai, that seeks to empower gig workers by helping them regain access to their personal data through data access rights, using the European Union General Data Protection Regulation. It is based on a case study of Uber drivers in Geneva that has a worldwide relevance for the gig economy. Previously self-employed, drivers are now classified as employees and their working time and earnings must be calculated according to local labour laws. We contribute to debates on algorithmic management in ride-hailing platforms by focusing on participatory methods of accountability through personal data, from an infrastructural perspective. First, we focus on the nexus between personal data protection and algorithmic management to understand the domination of ride-hailing platforms over the workers’ means of production, i.e., their personal data. We provide empirical transparency on the data structures of Uber for the sake of algorithmic accountability. These structures are utilised for their surge pricing algorithms and ultimately govern the workforce. Second, within a collective process of governance, we built participatory tools and methods for empowering gig workers and data scientists. These are means for calculating earnings and working that made explicit a new social meaning of work, i.e., “lost time between rides”.
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来源期刊
First Monday
First Monday Computer Science-Computer Networks and Communications
CiteScore
2.20
自引率
0.00%
发文量
86
期刊介绍: First Monday is one of the first openly accessible, peer–reviewed journals on the Internet, solely devoted to the Internet. Since its start in May 1996, First Monday has published 1,035 papers in 164 issues; these papers were written by 1,316 different authors. In addition, eight special issues have appeared. The most recent special issue was entitled A Web site with a view — The Third World on First Monday and it was edited by Eduardo Villanueva Mansilla. First Monday is indexed in Communication Abstracts, Computer & Communications Security Abstracts, DoIS, eGranary Digital Library, INSPEC, Information Science & Technology Abstracts, LISA, PAIS, and other services.
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