Algorithmic Fairness and Color-blind Racism: Navigating the Intersection
Jamelle Watson-Daniels

TL;DR
This paper examines the intersection of algorithmic fairness and racism, specifically analyzing how color-blind racism influences research and proposing ways to better integrate racial scholarship with algorithmic studies.
Contribution
It introduces a critical analysis of color-blind racism within algorithmic fairness research and advocates for interdisciplinary reflection to improve understanding and address biases.
Findings
Identifies disconnects between algorithmic fairness and racial scholarship
Highlights ideological shifts in discourse on race and algorithms
Suggests strategies for interdisciplinary integration
Abstract
Our focus lies at the intersection between two broader research perspectives: (1) the scientific study of algorithms and (2) the scholarship on race and racism. Many streams of research related to algorithmic fairness have been born out of interest at this intersection. We think about this intersection as the product of work derived from both sides. From (1) algorithms to (2) racism, the starting place might be an algorithmic question or method connected to a conceptualization of racism. On the other hand, from (2) racism to (1) algorithms, the starting place could be recognizing a setting where a legacy of racism is known to persist and drawing connections between that legacy and the introduction of algorithms into this setting. In either direction, meaningful disconnection can occur when conducting research at the intersection of racism and algorithms. The present paper urges…
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Taxonomy
TopicsDigital Economy and Work Transformation · Ethics and Social Impacts of AI
