Predictive Analytics for Credit Risk Prevention in Community Banking Using Data Integration
Independent Researcher, Wilmington University, Delaware, USA.
World Journal of Advanced Research and Reviews, 2025, 16(03), 1456-1466
Article DOI: 10.30574/wjarr.2022.16.3.1458
Publication history:
Received on 14 November 2022; revised on 25 December 2022; accepted on 28 December 2022
Abstract:
This paper presents a predictive analytics system for loan default prevention in community banking that combines explainable AI techniques with comprehensive socioeconomic data integration to provide early warning capabilities while maintaining fairness and transparency in lending decisions. The proposed Community Banking Predictive System (CBPS) addresses unique challenges faced by community banks including limited data availability, the need for personalized customer relationships, and regulatory requirements for fair lending practices. Our methodology integrates traditional credit data with alternative data sources including local economic indicators, employment statistics, demographic trends, and community development metrics to create more comprehensive risk assessments. The system employs explainable machine learning algorithms that provide clear, understandable reasons for risk predictions, enabling loan officers to make informed decisions while maintaining customer relationships. We introduce a novel fairness-aware feature selection algorithm that automatically identifies and mitigates potential bias in lending decisions while preserving predictive accuracy. The predictive component can identify customers at risk of default up to 12 months in advance, enabling proactive intervention strategies such as loan restructuring, financial counseling, or payment plan modifications. Our implementation includes automated early warning alerts, customer communication tools, and intervention tracking capabilities. Experimental validation using anonymized community bank datasets shows 73% improvement in default prediction accuracy while maintaining fair lending compliance and reducing actual default rates by 45% through proactive intervention programs.
Keywords:
Predictive analytics; Loan default prevention; Community banking; Explainable AI; Fair lending; Socioeconomic data; Risk assessment; Financial inclusion
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Copyright © 2022 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0
