Understanding the Necessary Conditions of Multi-Source Trust Transfer in Artificial Intelligence

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2022-01-04
Authors
Renner, Maximilian
Lins, Sebastian
Söllner, Matthias
Thiebes, Scott
Sunyaev, Ali
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Trust transfer is a promising perspective on prev-alent discussions about trust in AI-capable technologies. However, the convergence of AI with other tech-nologies challenges existing theoretical assumptions. First, it remains unanswered whether both trust in AI and the base technology is necessary for trust transfer. Second, a nuanced view on trust sources is needed, considering the dual role of trust. To address these issues, we examine whether trust in providers and trust in technologies are necessary trust conditions. We conducted a survey with 432 participants in the context of autonomous vehicles and applied necessary condition analysis. Our results indicate that trust in AI technology and vehicle technology are necessary sources. In contrast, only vehicle providers represent a necessary source. We contribute to research by provid-ing a novel perspective on trust in AI, applying a promising data analysis method to reveal necessary trust sources, and consider duality of trust in trust transfer.
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Advances in Distrust and Trust Research: Digital Technologies in Organizations and Beyond, necessary condition analysis, trust in artificial intelligence, trust in autonomous vehicles, trust transfer
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10 pages
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Proceedings of the 55th Hawaii International Conference on System Sciences
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Attribution-NonCommercial-NoDerivatives 4.0 International
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