Beyond case studies: Teaching data science critique and ethics through
sociotechnical surveillance studies
- URL: http://arxiv.org/abs/2305.02420v1
- Date: Wed, 3 May 2023 20:24:42 GMT
- Title: Beyond case studies: Teaching data science critique and ethics through
sociotechnical surveillance studies
- Authors: Nicholas Rabb, Desen Ozkan
- Abstract summary: Ethics have become an urgent concern for data science research, practice, and instruction in the wake of growing critique of algorithms and systems showing that they reinforce structural oppression.
We designed a data science ethics course that spoke to the social phenomena at the root of critical data studies through analysis of a pressing sociotechnical system: surveillance systems.
Students developed critical analysis skills that allowed them to investigate surveillance systems of their own and identify their benefits, harms, main proponents, those who resist them.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Ethics have become an urgent concern for data science research, practice, and
instruction in the wake of growing critique of algorithms and systems showing
that they reinforce structural oppression. There has been increasing desire on
the part of data science educators to craft curricula that speak to these
critiques, yet much ethics education remains individualized, focused on
specific cases, or too abstract and unapplicable. We synthesized some of the
most popular critical data science works and designed a data science ethics
course that spoke to the social phenomena at the root of critical data studies
-- theories of oppression, social systems, power, history, and change --
through analysis of a pressing sociotechnical system: surveillance systems.
Through analysis of student reflections and final projects, we determined that
at the conclusion of the semester, all students had developed critical analysis
skills that allowed them to investigate surveillance systems of their own and
identify their benefits, harms, main proponents, those who resist them, and
their interplay with social systems, all while considering dimensions of race,
class, gender, and more. We argue that this type of instruction -- directly
teaching data science ethics alongside social theory -- is a crucial next step
for the field.
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