Fischer, F. (2019). The Accuracy Paradox of Algorithmic Classification. In G. Getzinger & M. Jahrbacher (Eds.), Conference Proceedings of the STS Conference Graz 2019, Critical Issues in Science, Technology and Society Studies, 6 - 7 May 2019 (pp. 105–120). Verlag der Technischen Universität Graz. https://doi.org/10.3217/978-3-85125-668-0-07
18th Annual STS Conference Graz 2019: Critical Issues in Science, Technology and Society Studies
-
Event date:
6-May-2019 - 7-May-2019
-
Event place:
Graz, Austria
-
Number of Pages:
16
-
Publisher:
Verlag der Technischen Universität Graz, Graz
-
Publisher:
Verlag der Technischen Universität Graz
-
Peer reviewed:
Yes
-
Keywords:
governing algorithms; algorithmic classification; accuracy; agency; algorithmic decision making
-
Abstract:
In recent years, algorithmic classification based on machine learning techniques has been increasingly permeating our lives. With their increased ubiquity, negative social consequences have come to light. Among these consequences are ´unfair´ algorithms. This resulted in a large body of research tackling ´fairness´ of algorithms and related issues. Algorithms are frequently considered as unfair if they show diverging accuracies for different groups, with a particular focus on vulnerable groups, indicating a correlation between prediction and information about group membership.
In this paper I argue that, while this research contributes valuable insights, much of the research focuses a quantitative understanding of fairness which creates a very narrow focus. My argument builds on four pillars. First, much of the research on 'fairness' focuses on accuracy as basis for ´fairness´. Even though ´fairness´ can reduce the overall accuracy, this is seen as a limitation, implicitly aiming for high accuracy. Second, this focus is in line with other debates about algorithmic classification that focus on quantiative performance measures. Third, close attention on accuracy may be a pragmatic and well-intended stance for practicioners but can distract from problematizing the ´bigger picture´. Fourth, I argue that any classification produces a marginalized group, namely those that are misclassified. This marginalization increases with the classifier´s accuracy, and in tandem the ability of the affected to challenge the classification is diminished. Combined, this leads to the situation that a focus on fairness and accuracy may weaken the position and agency of those being misclassified, paradoxically contradicting the promissory narrative of ´fixing´ algorithms through optimizing fairness and accuracy.
en
Research Areas:
Visual Computing and Human-Centered Technology: 100%