https://papers.ssrn.com/sol3/papers.cfm?abstract_id=4331080

Veena Dubal, <https://papers.ssrn.com/sol3/cf_dev/AbsByAuth.cfm?per_id=1780991> 
On Algorithmic Wage Discrimination

Posted: 23 Jan 2023

Abstract

Recent technological developments related to the extraction and processing of 
data have given rise to widespread concerns about a reduction of privacy in the 
workplace. For a growing number of low-income and subordinated racial minority 
work forces in the United States, however, on-the-job data collection and 
algorithmic decision-making systems are having a much more profound yet 
overlooked impact: these technologies are fundamentally altering the experience 
of labor and undermining the possibility of economic stability and mobility 
through work. Drawing on a multi-year, first-of-its-kind ethnographic study of 
organizing on-demand workers, this Article examines the historical rupture in 
wage calculation, coordination, and distribution arising from the logic of 
informational capitalism: the use of granular data to produce unpredictable, 
variable, and personalized hourly pay. Rooted in worker on-the-job experiences, 
I construct a novel framework to understand the ascent of digitalized variable 
pay practices, or the transferal of price discrimination from the consumer to 
the labor context, what I identify as algorithmic wage discrimination.

Across firms, the opaque practices that constitute algorithmic wage 
discrimination raise central questions about the changing nature of work and 
its regulation under informational capitalism. Most centrally, what makes 
payment for labor in platform work fair? How does algorithmic wage 
discrimination change and affect the experience of work? And, considering these 
questions, how should the law intervene in this moment of rupture?

To preface an assessment, Part I examines the rise of algorithmic wage 
discrimination and its historic legalization in California and Washington state 
as crucial occasions to understand how data from labor and algorithmic 
decision-making systems are changing wage practices in service and logistics 
sectors. The section also considers the extent to which these new laws comport 
with legal and cultural expectations about moral economies of work arising from 
and embedded in longstanding wage equalization statutes - namely, minimum wage 
and anti-discrimination laws. Part II uses findings and analysis from 
ethnographic research to assess how data from labor is used to produce 
algorithmic wage discrimination in ride-hail work and how workers subjectively 
experience and respond to the practice. I find that workers describe the 
variable payment structures as forms of gambling and trickery, and that these 
experiences, in turn, produce profoundly unsettling moral expectations about 
work and remuneration. Part III assesses both how workers’ groups have 
leveraged existing data privacy and business association laws to contest 
algorithmic wage discrimination and the limitations of these approaches. The 
Article concludes by proposing a non- waivable legal restriction on its 
practice, which will in turn also restrict harmful data extraction and deter 
firm fissuring practices.


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