Clearing the way for participatory data stewardship in artificial intelligence development

a mixed methods approach

Journal Article (2023)
Author(s)

Sage Kelly (Queensland University of Technology)

Sherrie Anne Kaye (Queensland University of Technology)

Katherine M. White (Queensland University of Technology)

Oscar Oviedo-Trespalacios (TU Delft - Safety and Security Science)

Safety and Security Science
DOI related publication
https://doi.org/10.1080/00140139.2023.2289864
More Info
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Publication Year
2023
Language
English
Safety and Security Science
Issue number
11
Volume number
66
Pages (from-to)
1782-1799
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Abstract

Participatory data stewardship (PDS) empowers individuals to shape and govern their data via responsible collection and use. As artificial intelligence (AI) requires massive amounts of data, research must assess what factors predict consumers’ willingness to provide their data to AI. This mixed-methods study applied the extended Technology Acceptance Model (TAM) with additional predictors of trust and subjective norms. Participants’ data donation profile was also measured to assess the influence of individuals’ social duty, understanding of the purpose and guilt. Participants (N = 322) completed an experimental survey. Individuals were willing to provide data to AI via PDS when they believed it was their social duty, understood the purpose and trusted AI. However, the TAM may not be a complete model for assessing user willingness. This study establishes that individuals value the importance of trusting and comprehending the broader societal impact of AI when providing their data to AI. Practitioner summary: To build responsible and representative AI, individuals are needed to participate in data stewardship. The factors driving willingness to participate in such methods were studied via an online survey. Trust, social duty and understanding the purpose significantly predicted willingness to provide data to AI via participatory data stewardship.