Differential Privacy for Credit Risk Model
Tabish Maniar, Alekhya Akkinepally, Anantha Sharma

TL;DR
This paper explores implementing differential privacy in credit risk modeling to protect customer data while maintaining model performance, evaluating a practical framework in a banking context.
Contribution
It provides a pragmatic approach to integrating differential privacy into credit risk models using a general-purpose framework, with empirical evaluation in banking.
Findings
Differential privacy can be integrated into credit risk models.
The differentially private model maintains acceptable performance levels.
Privacy protections effectively reduce data leakage risks.
Abstract
The use of machine learning algorithms to model user behavior and drive business decisions has become increasingly commonplace, specifically providing intelligent recommendations to automated decision making. This has led to an increase in the use of customers personal data to analyze customer behavior and predict their interests in a companys products. Increased use of this customer personal data can lead to better models but also to the potential of customer data being leaked, reverse engineered, and mishandled. In this paper, we assess differential privacy as a solution to address these privacy problems by building privacy protections into the data engineering and model training stages of predictive model development. Our interest is a pragmatic implementation in an operational environment, which necessitates a general purpose differentially private modeling framework, and we…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Blockchain Technology Applications and Security · Cryptography and Data Security
