Developing Predictive Models for Financial Stability: IntegratingBehavioral Analytics into Credit Risk Management
DOI:
https://doi.org/10.47363/JAICC/2024(3)E173Keywords:
Behavioral Analytics, Credit Risk, Predictive Models, Financial Stability, Risk Assessment, Consumer Behavior, Machine Learning, Real-Time Data, Traditional Models, Data IntegrationAbstract
In this article, its author takes an attempt at investigating the use of behavioral analytics to complement credit risk management in the world of finance. Current mainstream credit risk models very much depend on conventional methods that incorporate historical financial information like credit scores and income while ignoring client behavioral contemporaneous patterns essential for modeling their risk levels. By this, the transactional patterns; payment behaviour and digital activities included besides the traditional financial parameters allows the financial institution to make superior models that gives better results on credit worthiness and risk identification earlier. It is crucial for both better risk assessment and for embracing more inclusion within lending networks and financial creativity. Analyzing the informational component of behavioral data as well as its applicability in credit risk modeling and considering the difficulties of implementing it in practice, the article provides an outline of the approaches to telemetry integration.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Journal of Artificial Intelligence & Cloud Computing

This work is licensed under a Creative Commons Attribution 4.0 International License.