Machine Learning (ML) Technologies for Digital Credit Scoring in Rural Finance: A Literature Review
Abstract
:1. Introduction
2. Relevant Literature and Motivation of Study
2.1. Traditional Method vs. Digital Method for Credit Assessment
2.2. Fintech and Big Tech Companies Are Using Digital Channels for Providing Specific and Speedy Banking Solutions
2.3. Empirical Analysis of Existing Research on ML Methods Adopted by Various Financial Institutions Worldwide for Credit Scoring
3. Materials and Methods
4. Findings and Analysis
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Author (from Reference List) | Year | Country or Financial Institution | Credit Scoring Techniques Followed | Datasets/Variable Used | Key Findings or Recommendations |
---|---|---|---|---|---|
Fernanda M. Assef, Maria Teresinha A. Steiner | 2020 | Brazilian financial institution | Artificial Neural Networks Multilayer Perceptron (ANN-MLP), Logistic Regression (LR) and Support Vector Machines (SVM) | 5432 companies (2600 clients—non-defaulters, 1551—defaulters, and 1281—temporarily defaulters) | Hybrid techniques for credit risk assessments may be followed for better results |
Somayeh Moradi and Farimah Mokhatab Rafiei | 2019 | Iranian banks | Fuzzy Logic | Behavioral features of banking customers during special political and economic conditions | A few qualitative predictors like accountability, commitment, honesty, reputation, and ethics should also be added for the risk analysis |
José Francisco Martínez Sánchez, Gilberto Pérez Lechuga | 2016 | Mexican financial system/SOFIPO | NPV, IRR, and payback period | Banking infrastructure and human capital for credit risk assessment | Evaluation of credit scoring system in terms of cost-efficiency, for the finance companies’ community SOFIPOs |
Ghita Bennouna, Mohamed Tkiouat | 2019 | Morocco (microfinance institutions) | Fuzzy Logic | History of client behavior (descriptive variable, a behavioral variable, and variable characterizing loans contracted) of microfinance institutions | Evaluation of customer behavior by using the fuzzy logic approach, to reduce loan default |
Maisa Cardoso Aniceto, Flavio Barboza and Herbert Kimura | 2020 | Brazilian bank | AdaBoost and Random Forest models, and compare with a benchmark based on a Logistic Regression model | Database (large Brazilian financial institution) of 124,624 consumers’ loans and their repayment schedule | Random Forest and AdaBoost perform better when compared to other ML models for borrower’s adequacy classification |
I Gusti Ngurah Narindra Mandalaa, Catharina Badra Nawangpalupia, Fransiscus Rian Praktikto | 2012 | Rural bank (Bank Perkreditan Rakyat), Indonesia | Decision Tree model (data mining methodology) | Variables like gender, collateral type, source of fund, business activity, etc., taken for credit risk assessment | Critical factors identification for a rural bank (Bank Perkreditan Rakyat) to assess the credit application |
Dalila Boughaci, Abdullah Ash-shuayree Alkhawaldeh | 2018 | Vietnam | LS, SLS, and VNS for feature selection, combine these methods with SVM classifier | German and Australian credit datasets | Future research is recommended to know the impact of the feature selection-based method with the other machine-learning techniques for credit scoring |
Ronald Aliija, Bernard Wakabi Muhangi | 2017 | Uganda/microfinance institutions | Linear Regression | 38 loan officers and six credit managers in six microfinance institutions in Fort Portal municipality, Western Uganda | To examine the challenges faced by credit officers at the loan appraisal stage |
Onder Ozgur, Erdal Tanas Karagol and Fatih Cemil Ozbugday | 2021 | Turkey | Comparing the performance of six ML techniques (Tree Regression, Bagging, Boosting, Random Forest, Extra-Trees, and Xgboost) with the standard Linear Regression | 19 deposit banks in Turkey, the data set contains nine bank-specific variables, seven macroeconomic indicators, and three global factors to determine the lending behavior of the bank, for the period 2002Q4–2019Q2 | This study analyzes that the Random Forest model has the lowest predicting error |
Paweł Pławiaka, Moloud Abdar, Joanna Pławiak, Vladimir Makarenkovc, U Rajendra Acharya | 2020 | - | Genetic Algorithm | Statlog German credit approval data (1000 instances—accepted/good applicants—700 and rejected/bad applicants—300) | Proposed Deep Genetic Hierarchical Network of Learners (DGHNL) model with a 29-layer structure helps in getting the prediction accuracy of 94.60% |
Rui Ying Goh, Lai Soon Lee, Hsin-Vonn Seow and Kathiresan Gopal | 2020 | - | Hybrid Model (HS-SVM and HS-RF) | German and Australian data sets which are publicly available at the UCI repository (https://archive.ics.uci.edu/) | A Modified Harmony Search (MHS) model is proposed to achieve comparable results for credit scoring |
Credit Scoring Method | Type | No. of Articles Referred |
---|---|---|
ANN | AI method | 3 |
SVM | AI method | 3 |
Decision Tree | AI method | 2 |
Logistic Regression | Econometric | 4 |
GA | AI method | 1 |
Fuzzy Logic | AI method | 2 |
Random Forest | AI method | 3 |
XGBoost | AI method | 1 |
Descriptive analytical approach | Econometric | 1 |
Hybrid model | Hybrid system | 2 |
Linear Regression | Mathematical/Statistical | 1 |
Theoretical/Subjective judgement/Other | Expert system | 2 |
Credit Scoring Technique | ||||||
---|---|---|---|---|---|---|
Expert System (based on 5Cs) | ||||||
Linear Programming | ||||||
Logistic Regression | ||||||
AI-ML-Based | ||||||
Genetic Algorithm (GA) | ||||||
Hybrid Model (AI + AI) OR (AI + other) | ||||||
Year | 1970 | 1980 | 1990 | 2000 | 2010 | 2020–2021 |
Popular Author/Researcher | Credit Scoring Technique Studied/Employed | Year | Studied on |
---|---|---|---|
Chatterjee and Barcun | KNN | 1970 | Individual credit risk estimation |
Henley and Hand | KNN | 1997 | Individual credit risk estimation |
Rivoli and Brewer | Logistic Regression | 1998 | Credit risk estimation |
Mangasarian | Linear Programming | 1965 | Prediction classification |
Altman et al. | Logistic Regression | 1980 | Credit risk estimation for SMEs |
Goovaerts and Steenackers | Logistic Regression | 1989 | Personal credit scoring |
Tam and Kiang | ANN | 1992 | Bankruptcy prediction |
Desai et al. | ANN | 1996 | Individual credit risk estimation |
Lee et al. | CART and MARS | 2006 | Individual credit risk estimation |
Desai et al. | GA | 1997 | Individual credit risk estimation |
Huang et al. | 2 stage genetic programming | 2006 | Individual credit risk estimation |
Chen et al. | Hybrid SVM and three strategies | 2009 | Individual credit risk estimation |
Jacky | Machine Learning | 2018 | Credit fraud detection |
Keqin Chen et al. | Hybrid (Logistic Regression and Evidence Weight) | 2020 | Individual credit risk estimation |
Rui Ying Goh et al. | Hybrid model—HS-SVM and HS-RF | 2020 | Individual credit risk estimation |
Parameters | Comparative Analysis—Credit Scoring Techniques | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Weights | ANN | SVM | RF/XG Boost | Logistic Regression | GA | Hybrid Model | |||||||
Rating | Score | Rating | Score | Rating | Score | Rating | Score | Rating | Score | Rating | Score | ||
Accuracy | 0.30 | 4 | 1.2 | 4 | 1.2 | 5 | 1.5 | 3 | 0.9 | 4 | 1.2 | 4 | 1.2 |
Performance | 0.30 | 4 | 1.2 | 3 | 0.9 | 5 | 1.5 | 3 | 0.9 | 4 | 1.2 | 4 | 1.2 |
Robustness | 0.20 | 3 | 0.6 | 3 | 0.6 | 3 | 0.6 | 3 | 0.6 | 4 | 0.8 | 5 | 1 |
Volume of Data | 0.20 | 3 | 0.6 | 3 | 0.6 | 3 | 0.6 | 2 | 0.4 | 3 | 0.6 | 5 | 1 |
Total | 1.00 | 3.6 | 3.3 | 4.2 | 2.8 | 3.8 | 4.4 |
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Kumar, A.; Sharma, S.; Mahdavi, M. Machine Learning (ML) Technologies for Digital Credit Scoring in Rural Finance: A Literature Review. Risks 2021, 9, 192. https://doi.org/10.3390/risks9110192
Kumar A, Sharma S, Mahdavi M. Machine Learning (ML) Technologies for Digital Credit Scoring in Rural Finance: A Literature Review. Risks. 2021; 9(11):192. https://doi.org/10.3390/risks9110192
Chicago/Turabian StyleKumar, Anil, Suneel Sharma, and Mehregan Mahdavi. 2021. "Machine Learning (ML) Technologies for Digital Credit Scoring in Rural Finance: A Literature Review" Risks 9, no. 11: 192. https://doi.org/10.3390/risks9110192
APA StyleKumar, A., Sharma, S., & Mahdavi, M. (2021). Machine Learning (ML) Technologies for Digital Credit Scoring in Rural Finance: A Literature Review. Risks, 9(11), 192. https://doi.org/10.3390/risks9110192