ASSESSING PUBLIC OPINION ON ALGORITHMIC FAIRNESS Reviewing practical challenges and the role of contextual factors
Abstract
AI ethicists often claim that where algorithmic decision-making is impacting
human lives, it is crucial to strive for transparency and explainability. As one
form of achieving these, some authors have argued for socio-technical design
of AI systems that involves the user in the design process. And while there is
no shortage of cases where this step is absent due to blatant disregard for
users’ interests, one can say that even where that is not the case, this is no
easy task due to a mounting knowledge gap among the general public on the
subject of AI.
This Master thesis aims to demonstrate the above issue in concrete terms by
attempting to collect public opinion on algorithmic fairness. The survey
conducted for this thesis asks participants to pick among four different
algorithmic models that they think achieves the best fairness in the presented
scenarios. Results indicate that (1) contextual factors do play a role, and (2)
that attempting to collect public opinion on the subject is challenging as there
is insufficient knowledge on the topic and, therefore, poor understanding of
the presented options.
As urgent as it is to conduct public consultations on algorithmic decisionmaking
where human lives are increasingly impacted, it is even more urgent
to improve public knowledge on the subject so that people could actually
make informed choices. Understanding the complexity of contextual factors
offers substantial support in that endeavor.
Degree
Master theses
View/ Open
Date
2023-02-01Author
Kecki, Veronica
Keywords
AI
artificial intelligence
ML
machine learning
algorithms
algorithmic decision-making
fairness
socio-technical design
AI ethics
Series/Report no.
2022:058
Language
eng