AI-Driven Adaptive UI in Insurance Applications: A Personalized Experience Across Age Groups
DOI:
https://doi.org/10.22399/ijcesen.2663Keywords:
AI, UI, Insurance applicationAbstract
Development of an intuitive and inclusive user interface that serves the different age groups of the audience is vital in the digital transformation of the Insurance sector. However, the common user experience fails to meet the distinct needs of elderly users, tech-savvy users, and different demographics. This paper introduces a novel insurance web application framework that utilizes AI for the dynamic rendering of user experience and interaction model based on the user’s digital usage proficiency. By engaging conversational AI, speech interfaces, smart form filling via digital uploads, and personalized workflow based on usage, the system guarantees an accessible and effective digital experience. This experience can change the reluctance to use digital services by a different range of people and provide them with confidence in using the digital capabilities for their needs. We describe the technical architecture, user flow designs, adaptive & dynamic UI strategy, and important benefits, laying down the preliminaries for a human-centric digital insurance model.
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