Quantifying the Invisible Labor in Crowd Work
Carlos Toxtli, Siddharth Suri, Saiph Savage

TL;DR
This study quantifies the unpaid invisible labor in crowd work, revealing it significantly reduces workers' effective wages and varies by demographics and skill levels, highlighting the need for fair compensation.
Contribution
The paper introduces a field study with a plugin to measure invisible labor time in crowd work, providing the first quantitative analysis of its economic impact.
Findings
Invisible labor accounts for 33% of workers' time, reducing median hourly wages from $3.76 to $2.83.
Managing payments is the most time-consuming invisible labor category.
Invisible labor impacts workers differently based on skill and demographics.
Abstract
Crowdsourcing markets provide workers with a centralized place to find paid work. What may not be obvious at first glance is that, in addition to the work they do for pay, crowd workers also have to shoulder a variety of unpaid invisible labor in these markets, which ultimately reduces workers' hourly wages. Invisible labor includes finding good tasks, messaging requesters, or managing payments. However, we currently know little about how much time crowd workers actually spend on invisible labor or how much it costs them economically. To ensure a fair and equitable future for crowd work, we need to be certain that workers are being paid fairly for all of the work they do. In this paper, we conduct a field study to quantify the invisible labor in crowd work. We build a plugin to record the amount of time that 100 workers on Amazon Mechanical Turk dedicate to invisible labor while…
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Taxonomy
TopicsDigital Economy and Work Transformation
