Conceptual Metaphors Impact Perceptions of Human-AI Collaboration
Pranav Khadpe, Ranjay Krishna, Li Fei-Fei, Jeffrey Hancock, Michael, Bernstein

TL;DR
This study investigates how the choice of conceptual metaphors in AI agents influences user perceptions, showing that metaphors signaling lower competence can lead to better evaluations and higher willingness to adopt, contrary to common design practices.
Contribution
It demonstrates that metaphor choices significantly impact user perceptions of AI agents, revealing that low competence metaphors may enhance user experience and adoption.
Findings
Low competence metaphors improve agent evaluations.
Higher competence metaphors attract more initial interest.
Users prefer systems with higher warmth and competence signals.
Abstract
With the emergence of conversational artificial intelligence (AI) agents, it is important to understand the mechanisms that influence users' experiences of these agents. We study a common tool in the designer's toolkit: conceptual metaphors. Metaphors can present an agent as akin to a wry teenager, a toddler, or an experienced butler. How might a choice of metaphor influence our experience of the AI agent? Sampling metaphors along the dimensions of warmth and competence---defined by psychological theories as the primary axes of variation for human social perception---we perform a study (N=260) where we manipulate the metaphor, but not the behavior, of a Wizard-of-Oz conversational agent. Following the experience, participants are surveyed about their intention to use the agent, their desire to cooperate with the agent, and the agent's usability. Contrary to the current tendency of…
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