Research on the AIGC in Mobile User Experience Design

Volume 10, Issue 1, February 2025     |     PP. 12-26      |     PDF (288 K)    |     Pub. Date: June 1, 2025
DOI: 10.54647/computer520446    16 Downloads     223 Views  

Author(s)

Yuehong Yuan, Faculty of Innovation and Design, City University of Macau, Macau
Yalong Xing, Faculty of Innovation and Design, City University of Macau, Macau

Abstract
With the rapid development of mobile internet and the widespread adoption of smart devices, the importance of mobile user experience (UX) design has become increasingly prominent. However, traditional design methods demonstrate significant limitations in addressing personalization, multi-device adaptation, and real-time feedback. Generative Artificial Intelligence (AIGC), as an emerging technology, offers new possibilities for the intelligent and efficient transformation of UX design. This study adopts the framework of the Five Elements of User Experience theory—strategy, scope, structure, skeleton, and surface—to explore the application paths and mechanisms of AIGC in mobile UX design. Employing methodologies such as literature review, case study, and comparative analysis, the research focuses on the practical effects of AIGC in user data mining, automated interface layout, intelligent interaction optimization, and visual content generation. The findings indicate that AIGC, through data-driven approaches and automated content generation, significantly enhances the accuracy of user needs identification, the responsiveness of design processes, and the degree of personalization in interface interactions. These advancements contribute to the ongoing transformation of mobile UX design from an experience-based to an intelligence-driven paradigm. This research not only extends the theoretical application boundaries of AIGC in the field of design but also provides methodological support for the future development of intelligent interactive systems, offering both theoretical value and practical significance.

Keywords
AIGC; Mobile Design; Five Elements of User Experience; User Experience (UX)

Cite this paper
Yuehong Yuan, Yalong Xing, Research on the AIGC in Mobile User Experience Design , SCIREA Journal of Computer. Volume 10, Issue 1, February 2025 | PP. 12-26. 10.54647/computer520446

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