Towards fair and pro-social employment of digital pieceworkers for sourcing machine learning training data

Abstract

This work contributes to just and pro-social treatment of digital pieceworkers ("crowd collaborators") by reforming the handling of crowd-sourced labor in academic venues. With the rise in automation, crowd collaborators' treatment requires special consideration, as the system often dehumanizes crowd collaborators as components of the “crowd” [41]. Building off efforts to (proxy-)unionize crowd workers and facilitate employment protections on digital piecework platforms, we focus on employers: academic requesters sourcing machine learning (ML) training data.

Year of Publication
2022
Conference Name
CHI Conference on Human Factors in Computing Systems Extended Abstracts
Date Published
01