Generative AI in Digital Insurance: Redefining Customer Experience, Fraud Detection, and Risk Management

Authors

  • Sateesh Reddy Adavelli Solution Architect, USA. Author

Keywords:

Generative AI, Digital Insurance, Customer Experience, Fraud Detection, Risk Management

Abstract

This abstract summarizes, in essence, what generative AI means to the insurance industry. The kind of promise generated AI offers to insurance is huge: in risk assessment, customer experience, and operational efficiency. Natural disaster impact, financial market volatility, and cyber threat are augmented with techniques of real time scenario generation and modeling as well as predictive simulation based on synthetic data. One of the challenges that stand in the way of deploying these AI methods, however, is data privacy, model reliability and interpretability. The insurance industry must address these issues if it is to comply with regulations like GDPR and CCPA or mitigate reputational risks, as anybody can make complaints about any company based on any perceived data breach. Indeed, generative AI models, often convoluted and biased, can propagate unfair outcomes, especially in pricing and policy access. Navigating these challenges requires a whole new frayed society of AI specialists in collaboration with the industry’s insurers to offer bespoke solutions that address the firm’s needs. Based on this work, future developments will center on designing and implementing ethical and regulatory frameworks around AI-driven decisions that are transparent, fair and sustainable. Generative AI has historically been the most feared phenomenon in the history of western civilization, but with predictive analytics and risk simulation capabilities taking shape, generative AI is set to disrupt the insurance industry and add real-time decision support, automating claims processing and personalized interaction. To successfully integrate generative AI, technical, ethical and regulatory challenges will need to be addressed, and a trust-driven ecosystem will emerge to serve evolving customer needs.

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Published

18-11-2024

How to Cite

Sateesh Reddy Adavelli. (2024). Generative AI in Digital Insurance: Redefining Customer Experience, Fraud Detection, and Risk Management. International Journal of Computer Science and Information Technology Research , 5(2), 41-60. https://ijcsitr.com/index.php/home/article/view/IJCSITR_2024_05_02_005