To ensure the effective utilization of information resources by users in the era of artificial intelligence, it is crucial to explore the factors influencing user information adoption behavior and its configurational pathways within human–AI interaction contexts, which is the aim of this study.
This study focuses on users of AIGC platforms and employs the Elaboration Likelihood Model (ELM) as a theoretical foundation. Data analysis is conducted using Structural Equation Modeling (SEM) and fuzzy-set Qualitative Comparative Analysis (fsQCA).
The SEM results indicate that, with the exception of technological characteristics, all other factors positively influence user information adoption behavior. The fsQCA identifies four distinct configurations that contribute to information adoption behavior.
The findings suggest that AIGC platforms should enhance user information adoption by optimizing interaction systems, ensuring information quality, simplifying operational processes, and integrating emotional design.
