agent42labs.com

From Risk Assessment to Risk Prediction with ML

Powering smarter underwriting with machine learning–based risk modeling

The Challenge

The underwriting team of a top-tier insurance firm was relying on manual scorecards and static rules to evaluate policy risk. This led to inaccurate assessments, delays in quote generation, and limited personalization—especially for complex commercial insurance products.

Our Approach

We built a machine learning-powered risk engine using gradient boosting and neural networks trained on 10+ years of historical policy, claim, and demographic data. The project included:

  • Feature engineering pipelines for 200+ variables (behavioral, geographic, transactional)
  • Custom risk models per product line (e.g., auto, property, health)
  • Model interpretability using SHAP values for regulatory compliance
  • Integration into their existing quoting system via RESTful APIs

Stats

29% better underwriting accuracy
65% pricing accuracy boost
45% faster policy issuance

The Outcome

Machine learning didn’t just improve automation—it made risk evaluation smarter, faster, and fairer.
Our Expertise

Case Study

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