Trust in AI and Its Role in the Acceptance of AI Technologies
Hyesun Choung, Prabu David, Arun Ross

TL;DR
This paper investigates how trust influences the acceptance of AI technologies, identifying key trust dimensions and confirming their impact on user intention through two empirical studies.
Contribution
It introduces a multidimensional measure of trust and demonstrates its significant role in AI acceptance, extending the TAM framework.
Findings
Trust significantly affects AI usage intention.
Functionality trust has a greater impact than human-like trust.
Trust influences perceived usefulness and attitude toward AI.
Abstract
As AI-enhanced technologies become common in a variety of domains, there is an increasing need to define and examine the trust that users have in such technologies. Given the progress in the development of AI, a correspondingly sophisticated understanding of trust in the technology is required. This paper addresses this need by explaining the role of trust on the intention to use AI technologies. Study 1 examined the role of trust in the use of AI voice assistants based on survey responses from college students. A path analysis confirmed that trust had a significant effect on the intention to use AI, which operated through perceived usefulness and participants' attitude toward voice assistants. In study 2, using data from a representative sample of the U.S. population, different dimensions of trust were examined using exploratory factor analysis, which yielded two dimensions: human-like…
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Taxonomy
MethodsTemporal Adaptive Module
