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Dual humanness and trust in conversational AI: A person-centered approach
Journal article   Open access   Peer reviewed

Dual humanness and trust in conversational AI: A person-centered approach

Peng Hu, Yaobin Lu and Yeming Gong
Computers in Human Behavior
01/06/2021

Abstract

Artificial intelligence Humanness perception Trust Person-centered approach Finite mixture modeling
Conversational Artificial Intelligence (AI) is digital agents that interact with users by natural language. To advance the understanding of trust in conversational AI, this study focused on two humanness factors manifested by conversational AI: speaking and listening. First, we explored users' heterogeneous perception patterns based on the two humanness factors. Next, we examined how this heterogeneity relates to trust in conversational AI. A two-stage survey was conducted to collect data. Latent profile analysis revealed three distinct patterns: para-human perception, para-machine perception, and asymmetric perception. Finite mixture modeling demonstrated that the benefit of humanizing AI's voice for competence-related trust can evaporate once AI's language understanding is perceived as poor. Interestingly, the asymmetry between humanness perceptions in speaking and listening can impede morality-related trust. By adopting a person-centered approach to address the relationship between dual humanness and user trust, this study contributes to the literature on trust in conversational AI and the practice of trust-inducing AI design.
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2021 AI Computers in Human BehaviorDownloadView
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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.116 Robotics
4.116.1415 Human-Robot Interaction
Web of Science research areas
Psychology, Experimental
Psychology, Multidisciplinary
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