Credit decision support based on real set of cash loans using integrated machine learning algorithms

CC BY Logo DOI

One of the important research problems in the context of financial institutions is the assessment of credit risk and the decision to whether grant or refuse a loan. Recently, machine learning based methods are increasingly employed to solve such problems. However, the selection of appropriate feature selection technique, sampling mechanism, and/or classifiers for credit decision support is very challenging, and can affect the quality of the loan recommendations. To address this challenging task, this article examines the effectiveness of various data science techniques in issue of credit decision support. In particular, processing pipeline was designed, which consists of methods for data resampling, feature discretization, feature selection, and binary classification. We suggest building appropriate decision models leveraging pertinent methods for binary classification, feature selection, as well as data resampling and feature discretization. The selected models’ feasibility analysis was performed through rigorous experiments on real data describing the client’s ability for loan repayment. During experiments, we analyzed the impact of feature selection on the results of binary classification, and the impact of data resampling with feature discretization on the results of feature selection and binary classification. After experimental evaluation, we found that correlation-based feature selection technique and random forest classifier yield the superior performance in solving underlying problem.

Tytuł
Credit decision support based on real set of cash loans using integrated machine learning algorithms
Twórca
Ziemba Paweł ORCID 0000-0002-4414-8547
Słowa kluczowe
credit scoring; cash loans; machine learning; decision model; classification; feature selection; resampling; discretization; ocena kredytowa; pożyczki gotówkowe; uczenie maszynowe; model decyzyjny; klasyfikacja; selekcja cech; dyskretyzacja
Współtwórca
Becker Jarosław
Becker Aneta
Radomska-Zalas Aleksandra
Pawluk Mateusz
Wierzba Dariusz
Data
2021
Typ zasobu
artykuł
Identyfikator zasobu
DOI 10.3390/electronics10172099
Źródło
Electronics, 2021, vol. 10 iss. 17, [br. s.], 2099
Język
angielski
Prawa autorskie
CC BY CC BY
Kategorie
Publikacje pracowników US
Data udostępnienia16 mar 2022, 14:14:54
Data mod.16 mar 2022, 14:14:54
DostępPubliczny
Aktywnych wyświetleń0