Diversity in Sociotechnical Machine Learning Systems
Sina Fazelpour, Maria De-Arteaga

TL;DR
This paper explores the complex concept of diversity in machine learning systems, offering a taxonomy of diversity types, mechanisms of benefit, and their relevance to fair and accountable AI development.
Contribution
It introduces a taxonomy of diversity concepts, discusses mechanisms of diversity's benefits, and applies these frameworks to improve research and practice in sociotechnical ML systems.
Findings
Different concepts of diversity have distinct rationales.
Diversity can improve group performance through specific mechanisms.
Frameworks help clarify diversity discourse and research questions.
Abstract
There has been a surge of recent interest in sociocultural diversity in machine learning (ML) research, with researchers (i) examining the benefits of diversity as an organizational solution for alleviating problems with algorithmic bias, and (ii) proposing measures and methods for implementing diversity as a design desideratum in the construction of predictive algorithms. Currently, however, there is a gap between discussions of measures and benefits of diversity in ML, on the one hand, and the broader research on the underlying concepts of diversity and the precise mechanisms of its functional benefits, on the other. This gap is problematic because diversity is not a monolithic concept. Rather, different concepts of diversity are based on distinct rationales that should inform how we measure diversity in a given context. Similarly, the lack of specificity about the precise mechanisms…
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Taxonomy
TopicsEthics and Social Impacts of AI
