Data Leverage: A Framework for Empowering the Public in its Relationship
with Technology Companies
- URL: http://arxiv.org/abs/2012.09995v2
- Date: Wed, 17 Feb 2021 18:25:31 GMT
- Title: Data Leverage: A Framework for Empowering the Public in its Relationship
with Technology Companies
- Authors: Nicholas Vincent, Hanlin Li, Nicole Tilly, Stevie Chancellor, Brent
Hecht
- Abstract summary: Many powerful computing technologies rely on implicit and explicit data contributions from the public.
This dependency suggests a potential source of leverage for the public in its relationship with technology companies.
We present a framework for understanding data leverage that highlights new opportunities to change technology company behavior.
- Score: 13.174512123890015
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Many powerful computing technologies rely on implicit and explicit data
contributions from the public. This dependency suggests a potential source of
leverage for the public in its relationship with technology companies: by
reducing, stopping, redirecting, or otherwise manipulating data contributions,
the public can reduce the effectiveness of many lucrative technologies. In this
paper, we synthesize emerging research that seeks to better understand and help
people action this \textit{data leverage}. Drawing on prior work in areas
including machine learning, human-computer interaction, and fairness and
accountability in computing, we present a framework for understanding data
leverage that highlights new opportunities to change technology company
behavior related to privacy, economic inequality, content moderation and other
areas of societal concern. Our framework also points towards ways that
policymakers can bolster data leverage as a means of changing the balance of
power between the public and tech companies.
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