Credit Risk Prediction Based on Psychometric Data

Author:

Duman Eren1,Aktas Mehmet S.1,Yahsi Ezgi2ORCID

Affiliation:

1. Computer Engineering Department, Yildiz Technical University, Istanbul 34320, Turkey

2. Research and Development Center, Aktifbank, Istanbul 34394, Turkey

Abstract

In today’s financial landscape, traditional banking institutions rely extensively on customers’ historical financial data to evaluate their eligibility for loan approvals. While these decision support systems offer predictive accuracy for established customers, they overlook a crucial demographic: individuals without a financial history. To address this gap, our study presents a methodology for a decision support system that is intended to assist in determining credit risk. Rather than solely focusing on past financial records, our methodology assesses customer credibility by generating credit risk scores derived from psychometric test results. Utilizing machine learning algorithms, we model customer credibility through multidimensional metrics such as character traits and attitudes toward money management. Preliminary results from our prototype testing indicate that this innovative approach holds promise for accurate risk assessment.

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

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3. Turton, J., Gill, A., Harrald, P., and Demuth, E. (2023, September 01). A Review of the Psychological Factors Affecting the Acquisition and Outcomes of Credit. Available online: osf.io/preprints/psyarxiv/qa73h.

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