UGC Approved Journal no 63975(19)

ISSN: 2349-5162 | ESTD Year : 2014
Call for Paper
Volume 11 | Issue 4 | April 2024

JETIREXPLORE- Search Thousands of research papers



WhatsApp Contact
Click Here

Published in:

Volume 9 Issue 11
November-2022
eISSN: 2349-5162

UGC and ISSN approved 7.95 impact factor UGC Approved Journal no 63975

7.95 impact factor calculated by Google scholar

Unique Identifier

Published Paper ID:
JETIRTHE2021


Registration ID:
505025

Page Number

b300-b349

Share This Article


Jetir RMS

Title

Evaluating the performance of credit scoring models using data mining techniques. Case of the Ghanaian banking industry.

Abstract

Banks and other financial institutions cannot do away with the outstanding credit balances with customers and the speed at which customers file for bankruptcy presents a risk to the credit industry sustainability. The demand for banks and financial institutions to break even in the credit industry and their quest to reduce the cost to the minimal in the future has attracted various research interests from industrial communities, research laboratories, and academics. To save losses in the future, it requires that a more accurate and robust model with a consistent predictive ability to evaluate credit either using existing models or through a proposal of new models. In this work, we develop a linear model using logistics model. We evaluated four algorithms based upon their generational history in terms of performance. Support vector machine, logistic regression, artificial neural networks and random forest as an alternative if all three models fail to predict accurately in the Ghanaian dataset and we benchmark the experiment with the German and Australian dataset. We developed a linear discriminant model for determining the probability of defaults. We adopted 10-fold cross-validation and data partition as two major data splitting technique to ensure efficiency of all the classifiers. In our findings, it was evident that Support vectors machine, in general, have higher accuracy in terms of classification accuracy compared to logistic regression and artificial neural networks using AUC, Type I and II errors and Risk charts. Random Forest was better than all three classifiers in the case of Ghanaian dataset but fail to give higher predictive accuracy in the German and Australian dataset. RF, SVM, and LR can be used as alternatives to each other from our study and proven by other related works. This study did not consider the default probability or creditworthiness of applicants who were rejected in the process of applying for loans. In other words, our sample dataset contains information of only applicants who were granted the loans and defaulted. This could lead to bias in our analysis even though it is acceptable in this field of study.

Key Words

Artificial Neural Networks, Support Vector Machine, Logistic Regression, Random Forest, Ensembler, Imbalance data set, Feature Selection, Area under the ROC Curve, Cost sensitive, Classifier, Algorithms

Cite This Article

"Evaluating the performance of credit scoring models using data mining techniques. Case of the Ghanaian banking industry.", International Journal of Emerging Technologies and Innovative Research (www.jetir.org), ISSN:2349-5162, Vol.9, Issue 11, page no.b300-b349, November-2022, Available :http://www.jetir.org/papers/JETIRTHE2021.pdf

ISSN


2349-5162 | Impact Factor 7.95 Calculate by Google Scholar

An International Scholarly Open Access Journal, Peer-Reviewed, Refereed Journal Impact Factor 7.95 Calculate by Google Scholar and Semantic Scholar | AI-Powered Research Tool, Multidisciplinary, Monthly, Multilanguage Journal Indexing in All Major Database & Metadata, Citation Generator

Cite This Article

"Evaluating the performance of credit scoring models using data mining techniques. Case of the Ghanaian banking industry.", International Journal of Emerging Technologies and Innovative Research (www.jetir.org | UGC and issn Approved), ISSN:2349-5162, Vol.9, Issue 11, page no. ppb300-b349, November-2022, Available at : http://www.jetir.org/papers/JETIRTHE2021.pdf

Publication Details

Published Paper ID: JETIRTHE2021
Registration ID: 505025
Published In: Volume 9 | Issue 11 | Year November-2022
DOI (Digital Object Identifier):
Page No: b300-b349
Country: -, -, India .
Area: Engineering
ISSN Number: 2349-5162
Publisher: IJ Publication


Preview This Article


Downlaod

Click here for Article Preview

Download PDF

Downloads

000251

Print This Page

Current Call For Paper

Jetir RMS