Back to Search Start Over

A Bottom-Up End-User Intelligent Assistant Approach to Empower Gig Workers against AI Inequality

Authors :
Li, Toby Jia-Jun
Lu, Yuwen
Clark, Jaylexia
Chen, Meng
Cox, Victor
Jiang, Meng
Yang, Yang
Kay, Tamara
Wood, Danielle
Brockman, Jay
Publication Year :
2022

Abstract

The growing inequality in gig work between workers and platforms has become a critical social issue as gig work plays an increasingly prominent role in the future of work. The AI inequality is caused by (1) the technology divide in who has access to AI technologies in gig work; and (2) the data divide in who owns the data in gig work leads to unfair working conditions, growing pay gap, neglect of workers' diverse preferences, and workers' lack of trust in the platforms. In this position paper, we argue that a bottom-up approach that empowers individual workers to access AI-enabled work planning support and share data among a group of workers through a network of end-user-programmable intelligent assistants is a practical way to bridge AI inequality in gig work under the current paradigm of privately owned platforms. This position paper articulates a set of research challenges, potential approaches, and community engagement opportunities, seeking to start a dialogue on this important research topic in the interdisciplinary CHIWORK community.<br />Comment: In 2022 Symposium on Human-Computer Interaction for Work (CHIWORK 2022)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.13842
Document Type :
Working Paper