To address the need for comprehensive data to assess customer risk factors, we collected and integrated diverse data sources, including customer demographics, firmographics, and historical financial data, consolidating them into a unified dataset. Through feature engineering, we identified key risk factors such as customer age, health status, insurance coverage history, and financial metrics. We selected features with significant predictive power to build accurate risk assessment models.
We developed and trained machine learning models, including logistic regression, random forest, and gradient boosting, to predict customer risk levels effectively. By leveraging these model predictions, we implemented proactive risk mitigation strategies, such as targeted interventions and resource allocation adjustments. These predictive models were integrated into operational workflows for real-time risk assessment, with ongoing performance monitoring and refinement based on updated data and feedback.