International Journal of Innovative Research in Engineering & Multidisciplinary Physical Sciences
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Reimagining Underwriting Accuracy Through AI-Driven Risk Scoring Models

Authors: Jalees Ahmad

DOI: https://doi.org/10.37082/IJIRMPS.v14.i1.232912

Short DOI: https://doi.org/hbnbzz

Country: United States

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Abstract: The insurance industry is currently navigating a period of profound structural disruption, moving from a reactive "detect and repair" paradigm toward a proactive "predict and prevent" operational model. This transformation is underpinned by the deployment of artificial intelligence (AI) and machine learning (ML) architectures that redefine the core of insurance value: underwriting accuracy. This white paper examines the obsolescence of traditional manual underwriting—characterized by significant decision variance, operational latency, and an inability to account for granular property and behavioral risks—and proposes a new framework for individualized risk scoring. Central to this evolution is the ability of deep learning models to process massive volumes of unstructured data, specifically high-resolution satellite imagery for property assessment and high-frequency telematics for behavioral monitoring. Using Progressive Insurance as a primary case study, the analysis explores the technical implementation of machine learning platforms like H2O.ai, which leverage over 14 billion miles of driving data to produce hyper-personalized pricing models. Furthermore, the paper synthesizes the broader implications of these AI-driven scoring models across the banking and healthcare sectors, highlighting their roles in enhancing financial inclusion and optimizing clinical triage. While the efficiency gains are measurable, the analysis underscores the critical necessity for explainable AI (XAI) and robust governance to mitigate algorithmic bias and ensure regulatory compliance in a data-rich environment.

Keywords: Artificial Intelligence, Risk Scoring, Property and Casualty Insurance, Telematics, Satellite Imagery, Progressive Insurance, Predictive Analytics, Underwriting Efficiency, Financial Inclusion, Clinical Triage.


Paper Id: 232912

Published On: 2026-01-28

Published In: Volume 14, Issue 1, January-February 2026

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