LLM Memory & RAG 相关度: 7/10

AI in Insurance: Adaptive Questionnaires for Improved Risk Profiling

Diogo Silva, João Teixeira, Bruno Lima
arXiv: 2604.02034v1 发布: 2026-04-02 更新: 2026-04-02

AI 摘要

ARQuest利用LLM和另类数据构建个性化保险问卷,提升用户体验并简化流程。

主要贡献

  • 提出了ARQuest框架,使用LLM生成自适应问卷
  • 结合社交媒体图像分析和地理数据等另类数据
  • 实验表明用户更喜欢自适应问卷,体验更流畅

方法论

利用LLM和RAG构建自适应问卷,通过分析社交媒体图像和地理数据提取用户洞察,并进行实验评估。

原文摘要

Insurance application processes often rely on lengthy and standardized questionnaires that struggle to capture individual differences. Moreover, insurers must blindly trust users' responses, increasing the chances of fraud. The ARQuest framework introduces a new approach to underwriting by using Large Language Models (LLMs) and alternative data sources to create personalized and adaptive questionnaires. Techniques such as social media image analysis, geographic data categorization, and Retrieval Augmented Generation (RAG) are used to extract meaningful user insights and guide targeted follow-up questions. A life insurance system integrated into an industry partner mobile app was tested in two experiments. While traditional questionnaires yielded slightly higher accuracy in risk assessment, adaptive versions powered by GPT models required fewer questions and were preferred by users for their more fluid and engaging experience. ARQuest shows great potential to improve user satisfaction and streamline insurance processes. With further development, this approach may exceed traditional methods regarding risk accuracy and help drive innovation in the insurance industry.

标签

LLM RAG 保险 自适应问卷 另类数据

arXiv 分类

cs.AI