1,919 results on '"Credit scoring"'
Search Results
2. Multiple optimized ensemble learning for high-dimensional imbalanced credit scoring datasets.
- Author
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Lenka, Sudhansu R., Bisoy, Sukant Kishoro, and Priyadarshini, Rojalina
- Subjects
CREDIT risk ,RANDOM forest algorithms ,FEATURE selection ,SUBSET selection ,RESEARCH personnel - Abstract
Credit scoring models are crucial tools for lenders to assess credit risks. Researchers from academia and the financial industry have shown intense interest in these models. However, real credit datasets often have high dimensionality and class imbalance, making it challenging to develop accurate and effective credit scoring models. To address these challenges, a new approach called the Multiple-Optimized Ensemble Learning (MOEL) method has been proposed. In MOEL, a technique called Multiple Diverse Optimized Subsets (MDOS) generates multiple diverse optimized subsets from various weighted random forests. From each subset, more effective and relevant features are selected. Then, a new evaluation measure is applied to each subset to determine the more optimized subsets. These subsets are applied to a novel Mahalanobis-based oversampling (MOS) technique to provide balanced subsets for the base classifier, which lessens the detrimental effects of imbalanced datasets. Finally, a stacking-based ensemble method is applied to the balanced subsets for integration of the base models. The proposed model was evaluated against six high-dimensional imbalanced credit scoring datasets, and it outperformed state-of-the-art methods, exhibiting a mean rank of 1.5 and 1.333 in terms of F1_score and G-mean, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. Range control-based class imbalance and optimized granular elastic net regression feature selection for credit risk assessment.
- Author
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Amarnadh, Vadipina and Moparthi, Nageswara Rao
- Subjects
CREDIT analysis ,CREDIT risk ,FEATURE selection ,BORROWING capacity ,RISK assessment - Abstract
Credit risk, stemming from the failure of a contractual party, is a significant variable in financial institutions. Assessing credit risk involves evaluating the creditworthiness of individuals, businesses, or entities to predict the likelihood of defaulting on financial obligations. While financial institutions categorize consumers based on creditworthiness, there is no universally defined set of attributes or indices. This research proposes Range control-based class imbalance and Optimized Granular Elastic Net regression (ROGENet) for feature selection in credit risk assessment. The dataset exhibits severe class imbalance, addressed using Range-Controlled Synthetic Minority Oversampling TEchnique (RCSMOTE). The balanced data undergo Granular Elastic Net regression with hybrid Gazelle sand cat Swarm Optimization (GENGSO) for feature selection. Elastic net, ensuring sparsity and grouping for correlated features, proves beneficial for assessing credit risk. ROGENet provides a detailed perspective on credit risk evaluation, surpassing conventional methods. The oversampling feature selection enhances the accuracy of minority class by 99.4, 99, 98.6 and 97.3%, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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4. The good, the bad and the tenant: Rental platforms renewing racial capitalism in the post-apartheid housing market.
- Author
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Migozzi, Julien
- Abstract
This article examines how racial capitalism intersects with platform capitalism through the rise of rental platforms and corporate landlords in the post-apartheid housing market. Combining 18 months of fieldwork in Cape Town with the spatial analysis of sales and longitudinal census data, I demonstrate how rental platforms enabled the consolidation of the private rental sector and the emergence of corporate landlords through the classification of tenants centered upon credit scoring. To automate tenant screening solutions, rental platforms leveraged and extended the information dragnet knitted by credit bureaus. This dragnet of unprecedented depth and volume is built upon the infrastructures and devices that enabled the for-profit, racial classification of people, housing and neighborhoods during colonialism and apartheid, notably ID numbers. In the context of racialized indebtedness and housing inequalities engineered by racial property regimes, the use of platforms to sort the "good" from the "bad" tenant and manage rental portfolios shifts mechanisms of segregation and reproduces racialized patterns of capital accumulation across the post-apartheid city. The article argues that rental platforms extend the extractive logic of racial capitalism through two joint rentier mechanisms: the transformation of rental housing into a new asset class; the extraction and assetization of rental data. [ABSTRACT FROM AUTHOR]
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- 2024
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5. Method for Classifying Economic Agents Based on Neural Networks and Fuzzy Logic
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Neskorodieva, Tetiana, Fedorov, Eugene, Nechyporenko, Olga, Neskorodieva, Anastasiia, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Kazymyr, Volodymyr, editor, Morozov, Anatoliy, editor, Palagin, Alexander, editor, Shkarlet, Serhiy, editor, Stoianov, Nikolai, editor, Vinnikov, Dmitri, editor, and Zheleznyak, Mark, editor
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- 2024
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6. New Paradigm in Financial Technology Using Machine Learning Techniques and Their Applications
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Patnaik, Deepti, Patnaik, Srikanta, Kacprzyk, Janusz, Series Editor, Jain, Lakhmi C., Series Editor, Maglaras, Leandros A., editor, Das, Sonali, editor, Tripathy, Naliniprava, editor, and Patnaik, Srikanta, editor
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- 2024
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7. How Can Credit Scoring Benefit from Machine Learning? SWOT Analysis
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Bentounsi, Oussama, Lahmini, Hajar Mouatassim, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Abraham, Ajith, editor, Bajaj, Anu, editor, Hanne, Thomas, editor, and Siarry, Patrick, editor
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- 2024
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8. Applications of Predictive Models in FinTech
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Arnone, Gioia and Arnone, Gioia
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- 2024
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9. Modeling Automobile Credit Scoring Using Machine Learning Models
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Yiğit, Pakize, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, García Márquez, Fausto Pedro, editor, Jamil, Akhtar, editor, Hameed, Alaa Ali, editor, and Segovia Ramírez, Isaac, editor
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- 2024
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10. Deep Learning and Machine Learning Techniques for Credit Scoring: A Review
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Demma Wube, Hana, Zekarias Esubalew, Sintayehu, Fayiso Weldesellasie, Firesew, Girma Debelee, Taye, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Debelee, Taye Girma, editor, Ibenthal, Achim, editor, Schwenker, Friedhelm, editor, and Megersa Ayano, Yehualashet, editor
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- 2024
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11. A Synthesis on Machine Learning for Credit Scoring: A Technical Guide
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Akil, Siham, Sekkate, Sara, Adib, Abdellah, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Ben Ahmed, Mohamed, editor, Boudhir, Anouar Abdelhakim, editor, El Meouche, Rani, editor, and Karaș, İsmail Rakıp, editor
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- 2024
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12. Machine Learning in Finance Case of Credit Scoring
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El Maanaoui, Driss, Jeaab, Khalid, Najmi, Hajare, Saoudi, Youness, Falloul, Moulay El Mehdi, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Farhaoui, Yousef, editor, Hussain, Amir, editor, Saba, Tanzila, editor, Taherdoost, Hamed, editor, and Verma, Anshul, editor
- Published
- 2024
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13. Credit Risk Management in Microfinance: Application of Non-repayment Prediction Models
- Author
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Nejjar, Chaymae, Kaicer, Mohammed, Haimer, Sara El, Idhmad, Azzeddine, Essairh, Loubna, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Ezziyyani, Mostafa, editor, and Balas, Valentina Emilia, editor
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- 2024
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14. Credit Risk Scoring: A Stacking Generalization Approach
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Raimundo, Bernardo, Bravo, Jorge M., Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Rocha, Alvaro, editor, Adeli, Hojjat, editor, Dzemyda, Gintautas, editor, Moreira, Fernando, editor, and Colla, Valentina, editor
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- 2024
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15. The Rise of AI and ML in Financial Technology: An In-depth Study of Trends and Challenges
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Jain, Rahul, Vanzara, Rakesh, Sarvakar, Ketan, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Jiming, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Zhang, Junjie James, Series Editor, Tan, Kay Chen, Series Editor, Kumar, Amit, editor, and Mozar, Stefan, editor
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- 2024
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16. Incremental Machine Learning-Based Approach for Credit Scoring in the Age of Big Data
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Museba, Tinofirei, Moloi, Tankiso, editor, and George, Babu, editor
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- 2024
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17. A hybrid metaheuristic optimised ensemble classifier with self organizing map clustering for credit scoring.
- Author
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Singh, Indu, Kothari, D. P., Aditya, S., Rajora, Mihir, Agarwal, Charu, and Gautam, Vibhor
- Abstract
Credit scoring is a mathematical and statistical tool that aids financial institutions in deciding suitable candidates for the issuance of loans, based on the analysis of the borrower’s financial history. Distinct groups of borrowers have unique characteristics that must be identified and trained on to increase the accuracy of classification models for all credit borrowers that financial institutions serve. Numerous studies have shown that models based on diverse base-classifier models outperform other statistical and AI-based techniques for related classification problems. This paper proposes a novel multi-layer clustering and soft-voting-based ensemble classification model, aptly named Self Organizing Map Clustering with Metaheuristic Voting Ensembles (SCMVE) which uses a self-organizing map for clustering the data into distinct clusters with their unique characteristics and then trains a sailfish optimizer powered ensemble of SVM-KNN base classifiers for classification of each distinct identified cluster. We train and evaluate our model on the standard public credit scoring datasets—namely the German, Australian and Taiwan datasets and use multiple evaluation scores such as precision, F1 score, recall to compare the results of our model with other prominent works in the field. On evaluation, SCMVE shows outstanding results (95% accuracy on standard datasets) when compared with popular works in the field of credit scoring. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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18. Il credit scoring e la protezione dei dati personali: commento alle sentenze della Corte di giustizia dell’Unione europea del 7 dicembre 2023
- Author
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Valeria Pietrella and Stefania Racioppi
- Subjects
corte di giustizia dell’unione europea ,credit scoring ,protezione dei dati personali ,sindacato giurisdizionale ,trattamento automatizzato ,Law ,Cybernetics ,Q300-390 - Abstract
L’articolo analizza le sentenze della Corte di giustizia dell’Unione europea del 7 dicembre 2023 (cause riunite C-26/22 e C-64/22 e C-634/21). Le decisioni offrono infatti l’opportunità di riflettere su due temi principali: l’ampiezza del sindacato giurisdizionale esercitato su una decisione di reclamo adottata da un’autorità di controllo e la liceità della raccolta e del trattamento, anche automatizzato, dei dati personali. Le forme di tutela connesse al trattamento dei dati personali, sviluppandosi in più livelli e con modalità differenti, delineano nel loro complesso un sistema volto a garantire la massima protezione dei dati, che, anche in un’ottica di bilanciamento degli interessi, appare – almeno alla luce delle sentenze in esame – prevalere sugli interessi commerciali connessi all’utilizzo degli stessi.
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- 2024
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19. Credit scoring using machine learning and deep Learning-Based models
- Author
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Sami Mestiri
- Subjects
credit scoring ,machine learning ,artificial intelligence ,model comparison ,personal loan ,Finance ,HG1-9999 ,Statistics ,HA1-4737 - Abstract
Credit scoring is a useful tool for assessing the capability of customers repayments. The purpose of this paper is to compare the predictive abilities of six credit scoring models: Linear Discriminant Analysis (LDA), Random Forests (RF), Logistic Regression (LR), Decision Trees (DT), Support Vector Machines (SVM) and Deep Neural Network (DNN). To compare these models, an empirical study was conducted using a sample of 688 observations and twelve variables. The performance of this model was analyzed using three measures: Accuracy rate, F1 score, and Area Under Curve (AUC). In summary, machine learning techniques exhibited greater accuracy in predicting loan defaults compared to other traditional statistical models.
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- 2024
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20. A Novel Modified Binning and Logistics Regression to Handle Shifting in Credit Scoring.
- Author
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Anggodo, Yusuf Priyo and Girsang, Abba Suganda
- Subjects
CREDIT risk ,VENTURE capital ,FINANCIAL risk ,FINANCIAL technology ,EXECUTIVES ,PERSONAL loans ,EMERGING markets ,COMMERCIAL loans - Abstract
The development of financial technology (Fintech) in emerging economies such as Indonesia has been rapid in the last few years, opening a great potential for loan businesses, from venture capital to micro and personal loans. To survive in such competitive markets, new companies need a robust credit-scoring model. However, building a reliable model requires large stable data. The challenge is that datasets are often small, covering only a few months (short-period datasets). Therefore, this study proposes a modified binning method, namely changing a variable's values into two groups with the smallest distribution differences possible. Modified binning can maintain data trends to avoid future shifting. The simulation was conducted using a real dataset from Indonesian Fintech, comprising 44,917 borrower-level observations with 396 variables. To match the actual conditions, the first three months of data were allocated for modeling and the remaining for testing. Implementing modified binning and logistics regression to testing data results in a more stable score band than standard binning. Compared with other classifier methods, the proposed method obtained the best AUC results on the testing data (0.73). In addition, the proposed method is highly applicable as it can provide a straightforward explanation to upper management or regulators. It is practical to use in real-case financial technology with short-period problems. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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21. The shape of an ROC curve in the evaluation of credit scoring models.
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Kochański, Błażej
- Subjects
RECEIVER operating characteristic curves ,CREDIT scoring systems ,PARAMETERS (Statistics) ,ECONOMIC activity ,CREDIT analysis - Abstract
The AUC, i.e. the area under the receiver operating characteristic (ROC) curve, or its scaled version, the Gini coefficient, are the standard measures of the discriminatory power of credit scoring. Using binormal ROC curve models, we show how the shape of the curves affects the economic benefits of using scoring models with the same AUC. Based on the results, we propose that the shape parameter of the fitted ROC curve is reported alongside its AUC/Gini whenever the quality of a scorecard is discussed. [ABSTRACT FROM AUTHOR]
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- 2024
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22. An Age–Period–Cohort Framework for Profit and Profit Volatility Modeling.
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Breeden, Joseph L.
- Subjects
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CREDIT risk , *DATA structures , *DISEASE risk factors , *PANEL analysis , *PROFITABILITY - Abstract
The greatest source of failure in portfolio analytics is not individual models that perform poorly, but rather an inability to integrate models quantitatively across management functions. The separable components of age–period–cohort models provide a framework for integrated credit risk modeling across an organization. Using a panel data structure, credit risk scores can be integrated with an APC framework using either logistic regression or machine learning. Such APC scores for default, payoff, and other key rates fit naturally into forward-looking cash flow estimates. Given an economic scenario, every applicant at the time of origination can be assigned profit and profit volatility estimates so that underwriting can truly be account-level. This process optimizes the most fallible part of underwriting, which is setting cutoff scores and assigning loan pricing and terms. This article provides a summary of applications of APC models across portfolio management roles, with a description of how to create the models to be directly integrated. As a consequence, cash flow calculations are available for each account, and cutoff scores can be set directly from portfolio financial targets. [ABSTRACT FROM AUTHOR]
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- 2024
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23. REVISITING DISTANCE METRICS IN k-NEAREST NEIGHBORS ALGORITHMS Implications for Sovereign Country Credit Rating Assessments.
- Author
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CETIN, Ali Ihsan and BUYUKLU, Ali Hakan
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RATINGS & rankings of public debts , *K-nearest neighbor classification , *CREDIT analysis , *CLASSIFICATION algorithms , *EUCLIDEAN metric , *EUCLIDEAN distance , *EUCLIDEAN algorithm - Abstract
The k-nearest neighbors (k-NN) algorithm, a fundamental machine learning technique, typically employs the Euclidean distance metric for proximity-based data classification. This research focuses on the feature importance infused k-NN model, an advanced form of k-NN. Diverging from traditional algorithm uniform weighted Euclidean distance, feature importance infused k-NN introduces a specialized distance weighting system. This system emphasizes critical features while reducing the impact of lesser ones, thereby enhancing classification accuracy. Empirical studies indicate a 1.7% average accuracy improvement with proposed model over conventional model, attributed to its effective handling of feature importance in distance calculations. Notably, a significant positive correlation was observed between the disparity in feature importance levels and the model's accuracy, highlighting proposed model's proficiency in handling variables with limited explanatory power. These findings suggest proposed model's potential and open avenues for future research, particularly in refining its feature importance weighting mechanism, broadening dataset applicability, and examining its compatibility with different distance metrics. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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24. Personal factors as determinants of the risk rating for SME investment.
- Author
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Jurado, Antonio, Sánchez-Oro Sánchez, Marcelo, Robina-Ramirez, Rafael, and Jimenez-Naranjo, Hector V.
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INDUSTRIAL management ,BUSINESSPEOPLE ,CREDIT risk ,SMALL business ,CREDIT scoring systems ,LOANS ,STRUCTURAL equation modeling - Abstract
What variables indicate whether a small or medium enterprise (SME) applying for financing from a development bank is a good loan candidate? Structural equation modeling applied to a set of variables can provide the necessary insights. This paper analyzes 407 SMEs that applied for development loans in Pichincha Province, Ecuador. Rather than specific economic/financial quantitative variables often used in credit scoring models, we employed qualitative variables to study creditworthiness. The structural equation methodology can verify whether a client is creditworthy based on company management, product characteristics, and contextual market aspects. Another key contribution is the finding that an entrepreneur's personal/professional traits are the primary determinant for granting this type of loan. The results have theoretical and practical implications that could enhance the limited empirical research in this field to date. [ABSTRACT FROM AUTHOR]
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- 2024
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25. Credit Rating of Listed Companies Based on Financial Reporting Information in Banks
- Author
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Mohammad Jahangirian, Farzin Rezayi, and Reza Ehteshamrasi
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credit scoring ,banks ,financial reporting information ,Business ,HF5001-6182 ,Accounting. Bookkeeping ,HF5601-5689 - Abstract
Accurate and condition-based validation will increase the value of banks, and if this is not done well, banks will face the risk of bankruptcy. The purpose of this research is to evaluate the usefulness of financial reporting information in modeling the credit rating of bank customers in listed companies. The methods used to validate the model in listed companies were grounded theory, DEMATEL, and regression. In the first stage, four main axes including (1) financial criteria, (2) non-financial criteria, (3) corporate governance criteria, and (4) market criteria for credit rating of customers were clarified by asking the opinion of 10 experts, were explained for the credit rating of customers. Three hypotheses were identified in the DEMATEL phase: the first hypothesis: There is a significant positive relationship between financial factors and bank facilities received by companies admitted to the Tehran Stock Exchange. Second hypothesis: There is a significant positive relationship between the company's market information and the bank facilities received by the companies admitted to the Tehran Stock Exchange. Third hypothesis: There is a significant positive relationship between non-financial factors and bank facilities received by companies listed on the Tehran Stock Exchange. The findings of the regression analysis did not reject the above hypotheses in 64 companies during the 5 years from 1396 to 1400. Banks should pay attention to the characteristics of companies in the existing conditions when providing facilities
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- 2024
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26. Counterfactual Explanations With Multiple Properties in Credit Scoring
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Xolani Dastile and Turgay Celik
- Subjects
Counterfactual explanations ,credit scoring ,optimization ,eXplainable Artificial Intelligence (XAI) ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
EXplainable Artificial Intelligence (XAI) aims to reveal the reasons behind predictions from non-transparent classifiers. Explanations of automated decisions are important in critical domains such as finance, legal, and health. As a result, researchers and practitioners in recent years have actively worked on developing techniques that explain decisions from machine learning algorithms. For instance, an explanation technique called counterfactual explanation has recently been gaining traction in XAI. The interest in counterfactual explanations stems from the ability of the explanations to reveal what could have been different to achieve a desired outcome, as opposed to only highlighting important features. For instance, if a customer’s loan application is denied by the bank, a counterfactual will indicate the changes required for the customer to qualify for the loan in the future. For a counterfactual to be considered effective, several counterfactual properties must hold. This paper proposes a novel optimization formulation designed to generate counterfactual explanations that possess multiple properties concurrently. The efficacy of the proposed method is assessed on a publicly available credit dataset. The results showed a trade-off between validity and sparsity, which are both parts of a suite of counterfactual properties. Furthermore, the results showed that our proposed approach compromises validity to some degree but strikes a good balance between validity and sparsity.
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- 2024
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27. An Efficient and Scalable Byzantine Fault-Tolerant Consensus Mechanism Based on Credit Scoring and Aggregated Signatures
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Shihua Tong, Jibing Li, and Wei Fu
- Subjects
Blockchain ,consensus mechanisms ,PBFT ,credit scoring ,aggregated signatures ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Practical Byzantine Fault Tolerance (PBFT), a classic consensus algorithm in blockchain technology, is extensively used in consortium blockchain networks. However, it is challenged by issues such as low consensus efficiency, poor scalability, inability to guarantee throughput with large-scale node access, and complex communication processes. To solve these problems, this paper proposes an improved PBFT consensus mechanism based on credit scoring and aggregated signatures, i.e., the CA-PBFT algorithm. First, the algorithm designs the node credit scoring mechanism, adds the coordination node in the original algorithm model, stipulates the node state and functional limitations, and realizes the dynamic joining and exiting of the nodes, to solve the low efficiency of the PBFT algorithm during the consensus process and the problem of not supporting the dynamic joining and exiting of the nodes; at the same time, the signature scheme based on the BLS aggregated signature is designed, which reduces the length of the signature and simplifies the signing process, to solve the problem of the node’s signature taking up too much space during the consensus process, which affects the efficiency of the signature validation as well as the efficiency of the signature construction. Experimental results show that this consensus mechanism enables an efficient, secure, and scalable consensus process with low resource and computational costs.
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- 2024
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28. OptimizingEnsemble Learning to Reduce Misclassification Costs in Credit Risk Scorecards.
- Author
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Martin, John, Taheri, Sona, and Abdollahian, Mali
- Subjects
- *
CREDIT risk , *MACHINE learning , *FINANCIAL institutions , *K-nearest neighbor classification , *COST - Abstract
Credit risk scorecard models are utilized by lending institutions to optimize decisions on credit approvals. In recent years, ensemble learning has often been deployed to reduce misclassification costs in credit risk scorecards. In this paper, we compared the risk estimation of 26 widely used machine learning algorithms based on commonly used statistical metrics. The best-performing algorithms were then used for model selection in ensemble learning. For the first time, we proposed financial criteria that assess the impact of losses associated with both false positive and false negative predictions to identify optimal ensemble learning. The German Credit Dataset (GCD) is augmented with simulated financial information according to a hypothetical mortgage portfolio observed in UK, European and Australian banks to enable the assessment of losses arising from misclassification costs. The experimental results using the simulated GCD show that the best predictive individual algorithm with the accuracy of 0.87, Gini of 0.88 and Area Under the Receiver Operating Curve of 0.94 was the Generalized Additive Model (GAM). The ensemble learning method with the lowest misclassification cost was the combination of Random Forest (RF) and K-Nearest Neighbors (KNN), totaling USD 417 million in costs (USD 230 for default costs and USD 187 for opportunity costs) compared to the costs of the GAM (USD 487, USD 287 and USD 200). Implementing the proposed financial criteria has led to a significant USD 70 million reduction in misclassification costs derived from a small sample. Thus, the lending institutions' profit would considerably rise as the number of submitted credit applications for approval increases. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. The hazards of delivering a public loan guarantee scheme: An analysis of borrower and lender characteristics.
- Author
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Cowling, Marc, Wilson, Nick, Nightingale, Paul, and Kacer, Marek
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MONEYLENDERS ,FINANCIAL institutions ,LOANS ,BANKING industry ,CORPORATIONS ,SMALL business ,SURETYSHIP & guaranty - Abstract
Using data between 2009 and 2020, we provide a detailed description of the borrowers within the Enterprise Finance Guarantee (EFG) loan portfolio, analyse time to default and how it differs across lender types. For limited companies, we match additional financial and non-financial data from public and proprietary databases and profile the characteristics of EFG companies within the population of limited companies. Employing hazard models we find loans granted to unincorporated businesses by the medium-sized financial institutions are associated with a much lower hazard than those provided by smaller local lending institutions and not-for-profit agencies. Moreover, we find some evidence that loans to limited companies, issued by the big UK banking groups, have a significantly lower default than those from medium-sized financial institutions. Large banks screen out high-risk firms. We argue that smaller lenders are able to price the risks rejected by the larger banks, using a wider range of credit information. JEL codes: G01, G21, L52, D25 [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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30. Implementing and analyzing fairness in banking credit scoring.
- Author
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Mariscal, Charlene, Yustiawan, Yoga, Rochim, Fauzy Caesar, and Tanuar, Evawaty
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MACHINE learning ,BANK loans ,FAIRNESS ,CONSCIOUSNESS raising - Abstract
The decision made by machine learning is mostly based on historical data that is used to train them. It raises the awareness that discrimination in machine learning should be eliminated because it may contain societal bias. The financial industry uses credit scoring as a reference to reflect the customer risk profile. To achieve fairness in the model, this paper tries to: (1) assess bias and (2) improve fairness in machine learning models with three bias mitigation methodologies. This study depicts that there is a trade-off between improving fairness and preserving performance. Implementing post-processing methods, for example, Grid Search performs best. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
31. A credit scoring ensemble model incorporating fuzzy clustering particle swarm optimization algorithm.
- Author
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Qin, Xiwen, Ji, Xing, Zhang, Siqi, and Xu, Dingxin
- Subjects
- *
PARTICLE swarm optimization , *OUTLIER detection , *CLUSTERING of particles , *FUZZY clustering technique , *CONSUMER behavior , *CREDIT risk , *CONSUMER lending , *RANDOM forest algorithms , *FUZZY algorithms - Abstract
The emergence of credit has generated a wealth of data on consumer lending behavior. In recent years, financial institutions have also started to use such data to make informed lending decisions based on fine-grained customer data, but conventional risk assessment models are inadequate in meeting the risk control requirements of the financial industry. Therefore, this paper proposes a credit scoring ensemble model incorporating fuzzy clustering particle swarm optimization (PSO) algorithm to obtain better credit risk prediction capability. First, a weighted outlier detection method based on the Induced Ordered Weighted Average Operator is proposed to preprocess the data to reduce noisy data's misleading effect on model training. Then, an undersampling method combined with fuzzy clustering PSO is proposed to overcome the negative effect of category imbalance on model training by resampling the data. In addition, a hyperparameter optimization framework is introduced to adaptively adjust important parameters in the ensemble model considering the impact of parameter settings on the training performance of the model. Based on the evaluation metrics of F-score, AUC, and Kappa coefficient, an empirical analysis was conducted on five credit risk datasets. The results show that the proposed method outperforms the comparative model with an improvement of 10% to 50% in terms of F-score and AUC. The highest achieved F-score is 0.9488, and the maximum AUC is 0.9807, demonstrating the effectiveness of the proposed method. The kappa coefficient results indicate a high level of consistency in the predicted classification results of the model. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
32. Quantum Optimized Cost Based Feature Selection and Credit Scoring for Mobile Micro-financing.
- Author
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Chen, Chi Ming, Tso, Geoffrey Kwok Fai, and He, Kaijian
- Subjects
CREDIT risk ,FEATURE selection ,CREDIT scoring systems ,WRAPPERS ,EVOLUTIONARY algorithms ,LOANS ,QUANTUM gates ,BUDGET - Abstract
Mobile e-commerce has grown rapidly in the last decade because of the development of mobile network services, computing capabilities and big data's applications. Financial institutions have been undergoing fundamental transformation in credit risk areas, specifically to traditional credit policy, that is now inadequate for accurately evaluating an individual's credit risk profile in a timely manner. A big-scale dataset representing deep mobile usage of 450,722 anonymous mobile users with a 28-month loan history and mobile behavior of both iOS and Android is designed, can add value for credit scoring in terms of better accuracy and lower feature acquisition cost by introducing a cost-based quantum-inspired evolutionary algorithm (QIEA) feature selection method. The QIEA adopts quantum-based individual representation and quantum rotation gate operator to improve feature exploration capability of conventional genetic algorithm (GA). The expected feature yield fitness function introduced in QIEA able to identify cost-effective feature subsets. Experimental results show that quantum-based method achieves good predictive performances even with only 70–80% number of features selected by GAs, and hence achieve lower feature acquisition costs with budget constraints. Additionally, computational time can be reduced by 30–60% compared with GAs depending on different feature set sizes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
33. A New Discrete Learning-Based Logistic Regression Classifier for Bankruptcy Prediction.
- Author
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Khashei, Mehdi, Etemadi, Sepideh, and Bakhtiarvand, Negar
- Subjects
COST functions ,PROCESS capability ,BANKRUPTCY ,INVESTORS ,LOGISTIC regression analysis ,BOND market - Abstract
Credit scoring or predicting bankruptcy is among the most crucial techniques for identifying high-risk and low-risk credit situations. Accordingly, enhancing the accuracy of bankruptcy prediction methods decreases the risk of inappropriate financial decisions. Also, increasing the accuracy of credit scoring models brings significant benefits such as improved turnover, credit market growth, proper and efficient allocation of financial resources, and sustained improvement of the profits of banks, investors, funds, and governments. Various statistical classification methods have been developed in the literature with different features and characteristics for more accurate bankruptcy prediction. However, despite all appearance differences in statistical classification approaches, they all adhere to a common idea and concept in their training procedures. The basic operation logic in whole-developed statistical classification methods focuses on maximizing a continuous distance-based cost function to yield the highest performance. Despite it being a common and frequently used procedure for classification purposes, it is an unreasonable and inefficient manner to achieve maximum accuracy in a discrete classification field. In this paper, a new discrete direction-based Logistic Regression that is a common statistical classifier method for bankruptcy forecasting is proposed. In the proposed Logistic Regression, in contrast to all traditionally developed statistical classifiers, the compatibility of the cost function and the training procedure is considered. While it can be shown overall that the performance of the presented discrete direction-based classifier will not be inferior to its continuous counterpart, an evaluation of the suggested classifier is conducted to ascertain its superiority. For this purpose, three credit scoring datasets are considered to assess the classification rate of the presented classifier. Empirical outcomes demonstrate that, as pre-expected, in all cases, the model put forward can attain a superior performance compared to conventional alternatives. These findings clearly demonstrated the significant influence of the consistency between the cost function and the training process on the classification capability, a consideration absent in any of the traditional statistical classification procedures. Consequently, the presented Logistic Regression can be considered an efficient alternative for credit scoring purposes to achieve more accurate results. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. Credit scoring and risk management in islamic banking: the case of Al Etihad Credit Bureau.
- Author
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Alhammadi, Mohamed Abdulraheem Ahmed, Ibañez-Fernandez, Alberto, and Vergara-Romero, Arnaldo
- Abstract
Copyright of Revista Venezolana de Gerencia (RVG) is the property of Revista de Filosofia-Universidad del Zulia and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
35. CREDIT SCORING COMO TRATAMIENTO DE DATOS PERSONALES A LA LUZ DEL RGPD. ANÁLISIS DE SU FINALIDAD E INFLUENCIA EN LOS POSIBLES USOS SECUNDARIOS DE LOS DATOS.
- Author
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Campos Rivera, Gonzalo
- Subjects
GENERAL Data Protection Regulation, 2016 ,CONSUMER credit ,BANKING industry ,BORROWING capacity ,LOANS ,PERSONALLY identifiable information - Abstract
Copyright of Revista de Derecho UNED is the property of Editorial UNED and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
36. CJEU: The Rating of a Natural Person's Creditworthiness by a Credit Rating Agency Constitutes Profiling and Can Be an Automated Decision under Article 22 GDPR.
- Author
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Horstmann, Jan
- Subjects
GENERAL Data Protection Regulation, 2016 ,PERSONALLY identifiable information ,ONLINE profiling ,DATA protection - Abstract
Case C-634/21 OQ v Land Hessen (Scoring), Judgment of the Court of Justice of the European Union (First Chamber) of 7 December 2023 Article 22 (1) of Regulation (EU) 2016/679 (General Data Protection Regulation) must be interpreted as meaning that the automated establishment, by a credit information agency, of a probability value based on personal data relating to a person and concerning his or her ability to meet payment commitments in the future constitutes 'automated individual decision-making' within the meaning of that provision, where a third party, to which that probability value is transmitted, draws strongly on that probability value to establish, implement or terminate a contractual relationship with that person. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
37. A recent review on optimisation methods applied to credit scoring models
- Author
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Kamimura, Elias Shohei, Pinto, Anderson Rogério Faia, and Nagano, Marcelo Seido
- Published
- 2023
- Full Text
- View/download PDF
38. Problems of determining the borrower's creditworthiness
- Author
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Oleksii Miroshnyk, Svitlana Shubina, and Valeriia Shulha
- Subjects
borrower's creditworthiness ,creditworthiness assessment ,assessment methods ,creditworthiness in times of war ,credit scoring ,Finance ,HG1-9999 - Abstract
This article addresses the challenges associated with determining the borrower's creditworthiness. The authors define the borrower's creditworthiness as the ability to timely and fully meet debt obligations to the lender. This determination is based on an evaluation of the borrower's financial condition, forecast of business development, and other factors influencing the ability to repay the loan. The authors identify internal and external factors affecting the creditworthiness of borrowers in Ukraine. Internal factors include the economic situation, regulatory policies, credit history, credit rating, and a lack of financial literacy. External factors encompass the global economic situation and the political climate. The article also discusses challenges in determining the borrower's creditworthiness during times of war. The authors note that creditworthiness can sharply decrease during such periods due to factors such as reduced income, increased costs, decreased demand for goods and services, and an unstable economic situation. To address these challenges during wartime, the authors propose the following recommendations: • Widespread use of artificial intelligence: AI enables the consideration of more factors affecting the borrower's creditworthiness and the adaptation of credit scoring models to changes in the economic situation. • Expansion of data on the borrower's financial condition: Financial institutions should utilize more data sources, including unstructured data such as social media and behavioral data, to assess the borrower's financial condition. • Development of new methods for assessing creditworthiness: Financial institutions should create new methods that account for the specific conditions of wartime. • Establishment of cooperation between financial institutions and government agencies: This collaboration will provide additional data on the financial condition of borrowers, offering financial institutions a more comprehensive view. • Promotion of financial literacy among the population: Improving financial literacy will empower borrowers to better understand their financial obligations and make more informed lending decisions. Implementing these recommendations will enable financial institutions to enhance the accuracy of creditworthiness assessments and, consequently, reduce credit risks during times of war.
- Published
- 2023
- Full Text
- View/download PDF
39. An interpretable decision tree ensemble model for imbalanced credit scoring datasets.
- Author
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My, Bui T.T. and Ta, Bao Q.
- Subjects
- *
DECISION trees , *MACHINE learning , *RANDOM forest algorithms , *STATISTICAL learning - Abstract
Credit scoring is a typical example of imbalanced classification, which poses a challenge to conventional machine learning algorithms and statistical classifiers when attempting to accurately predict outcomes for defaulting customers. In this paper, we propose a credit scoring classifier called Decision Tree Ensemble model (DTE). This model effectively addresses the challenge of imbalanced data and identifies significant features that influence the likelihood of credit status. An experiment demonstrates that DTE exhibits superior performance metrics in comparison to well-known based-tree ensemble classifiers such as Bagging, Random Forest, and AdaBoost, particularly when integrated with resampling techniques for handling imbalanced data. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
40. A recent review on optimisation methods applied to credit scoring models.
- Author
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Shohei Kamimura, Elias, Faia Pinto, Anderson Rogério, and Seido Nagano, Marcelo
- Subjects
- *
CREDIT ratings , *PROCESS optimization , *MACHINE learning , *ARTIFICIAL neural networks , *LITERATURE reviews , *INSTALLMENT plan - Abstract
Purpose – This paper aims to present a literature review of the most recent optimisation methods applied to Credit Scoring Models (CSMs). Design/methodology/approach – The research methodology employed technical procedures based on bibliographic and exploratory analyses. A traditional investigation was carried out using the Scopus, ScienceDirect and Web of Science databases. The papers selection and classification took place in three steps considering only studies in English language and published in electronic journals (from 2008 to 2022). The investigation led up to the selection of 46 publications (10 presenting literature reviews and 36 proposing CSMs). Findings – The findings showed that CSMs are usually formulated using Financial Analysis, Machine Learning, Statistical Techniques, Operational Research and Data Mining Algorithms. The main databases used by the researchers were banks and the University of California, Irvine. The analyses identified 48 methods used by CSMs, the main ones being: Logistic Regression (13%), Naive Bayes (10%) and Artificial Neural Networks (7%). The authors conclude that advances in credit score studies will require new hybrid approaches capable of integrating Big Data and Deep Learning algorithms into CSMs. These algorithms should have practical issues considered consider practical issues for improving the level of adaptation and performance demanded for the CSMs. Practical implications – The results of this study might provide considerable practical implications for the application of CSMs. As it was aimed to demonstrate the application of optimisation methods, it is highly considerable that legal and ethical issues should be better adapted to CSMs. It is also suggested improvement of studies focused on micro and small companies for sales in instalment plans and commercial credit through the improvement or new CSMs. Originality/value – The economic reality surrounding credit granting has made risk management a complex decision-making issue increasingly supported by CSMs. Therefore, this paper satisfies an important gap in the literature to present an analysis of recent advances in optimisation methods applied to CSMs. The main contribution of this paper consists of presenting the evolution of the state of the art and future trends in studies aimed at proposing better CSMs. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
41. Pretest and shrinkage estimators in generalized partially linear models with application to real data.
- Author
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Hossain, Shakhawat, Mandal, Saumen, and Lac, Le An
- Subjects
- *
MONTE Carlo method , *PARAMETRIC modeling , *MAXIMUM likelihood statistics , *PARAMETER estimation , *FAILURE time data analysis - Abstract
Semiparametric models hold promise to address many challenges to statistical inference that arise from real‐world applications, but their novelty and theoretical complexity create challenges for estimation. Taking advantage of the broad applicability of semiparametric models, we propose some novel and improved methods to estimate the regression coefficients of generalized partially linear models (GPLM). This model extends the generalized linear model by adding a nonparametric component. Like in parametric models, variable selection is important in the GPLM to single out the inactive covariates for the response. Instead of deleting inactive covariates, our approach uses them as auxiliary information in the estimation procedure. We then define two models, one that includes all the covariates and another that includes the active covariates only. We then combine these two model estimators optimally to form the pretest and shrinkage estimators. Asymptotic properties are studied to derive the asymptotic biases and risks of the proposed estimators. We show that if the shrinkage dimension exceeds two, the asymptotic risks of the shrinkage estimators are strictly less than those of the full model estimators. Extensive Monte Carlo simulation studies are conducted to examine the finite‐sample performance of the proposed estimation methods. We then apply our proposed methods to two real data sets. Our simulation and real data results show that the proposed estimators perform with higher accuracy and lower variability in the estimation of regression parameters for GPLM compared with competing estimation methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
42. A-RDBOTE: an improved oversampling technique for imbalanced credit-scoring datasets.
- Author
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Lenka, Sudhansu R., Bisoy, Sukant Kishoro, and Priyadarshini, Rojalina
- Subjects
CREDIT scoring systems ,CREDIT risk ,K-nearest neighbor classification ,FINANCIAL services industry ,BANKING industry ,CONSUMERS - Abstract
Banks and financial industries evaluate the creditworthiness of their customers through credit-scoring models before allocating loans to them. The performance of credit-scoring models significantly degrades due to class imbalance data, in which the class of defaulters is underrepresented as compared to that of non-defaulters, which is one of the major challenging tasks. In this paper, we propose a novel adaptive representative and density-based oversampling technique (A-RDBOTE) to deal with imbalanced credit-scoring datasets. First, the reverse k-nearest neighbor algorithm is applied to eliminate the noisy samples from the training set. Next, a semi-unsupervised clustering method is applied to cluster the minority instances. Then, from each sub-cluster, the representativeness of an instance is determined by considering its degree of similarity with respect to inter and intra-cluster. Subsequently, from each sub-cluster, the instances having high representative values are selected as anchor instances. Finally, artificial minority instances are generated around each anchor instance within the same sub-cluster. The experimental results showed that A-RDBOTE has achieved significantly better results than eight oversampling methods in terms of F1-score, AUC, and G-mean. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
43. Intelligent Classification for Credit Scoring Based on a Data Mining algorithm.
- Author
-
Fathi Al-Obaidi, Mohammed G.
- Subjects
OPTIMIZATION algorithms ,DATA mining ,BANKING industry ,FEATURE selection ,ALGORITHMS - Abstract
Credit scoring has grown in importance and has been thoroughly researched by banks and financial institutions. The amount of redundant and irrelevant features present in credit scoring datasets, however, reduces the classification accuracy. As a result, employing effective feature selection methods has become essential. In this study, a hybrid feature selection approach that combines the backpropagation neural network (BPNN) classifier and the pigeon optimization algorithm (POA) is suggested. With hybridization, the POA works to choose characteristic subgroups through the feature selection (FS) process, and the BPNN then assesses the chosen subsets using a fitness function. The experiment findings show that the suggested hybrid technique outperforms other competing approaches in terms of evaluation criteria, according to three benchmark credit scoring datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
44. 贝叶斯优化的XGBoost 信用风险评估模型.
- Author
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贾颖, 赵峰, 李博, and 葛诗煜
- Subjects
GAUSSIAN processes ,BANK loans ,DECISION trees ,PERCENTILES - Abstract
Copyright of Journal of Computer Engineering & Applications is the property of Beijing Journal of Computer Engineering & Applications Journal Co Ltd. and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
45. An Ensemble Learning Method Based on One-Class and Binary Classification for Credit Scoring.
- Author
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Zhang, Zaimei, Yuan, Yujie, and Liu, Yan
- Subjects
- *
LOANS , *CLASSIFICATION , *FINANCIAL institutions - Abstract
It is crucial to correctly assess whether a potential borrower can repay the loan in the credit scoring model. The credit loan data has a serious data imbalance because the number of defaulters is far less than the nondefaulters. However, most current methods for dealing with data imbalance are designed to improve the classification performance of minority data, which will reduce the performance of majority data. For a financial institution, the economic loss caused by the decrease in the classification performance of nondefaulters (majority data) cannot be ignored. This paper proposes an ensemble learning method based on one-class and binary classification (EMOBC) for credit scoring. The purpose is to improve the classification accuracy of the minority class while mitigating the loss of classification accuracy of the majority class as much as possible. EMOBC uses undersampling for the majority class (nondefault samples in credit scoring) and perform binary-class learning on the balanced data to improve the classification accuracy of the minority. To alleviate the decline in classification performance of the majority class, EMOBC uses one-class and binary collaborative classification to train classifiers. The classification result is determined by the average of one-class and binary-class classifiers. The experimental results show that EMOBC has good comprehensive performance compared with the existing methods. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
46. Mathematical Modeling and Analysis of Credit Scoring Using the LIME Explainer: A Comprehensive Approach.
- Author
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Aljadani, Abdussalam, Alharthi, Bshair, Farsi, Mohammed A., Balaha, Hossam Magdy, Badawy, Mahmoud, and Elhosseini, Mostafa A.
- Subjects
- *
CREDIT ratings , *CREDIT analysis , *PARTICLE swarm optimization , *MATHEMATICAL analysis , *DECISION trees , *CLASSIFICATION algorithms , *MATHEMATICAL models , *MACHINE learning - Abstract
Credit scoring models serve as pivotal instruments for lenders and financial institutions, facilitating the assessment of creditworthiness. Traditional models, while instrumental, grapple with challenges related to efficiency and subjectivity. The advent of machine learning heralds a transformative era, offering data-driven solutions that transcend these limitations. This research delves into a comprehensive analysis of various machine learning algorithms, emphasizing their mathematical underpinnings and their applicability in credit score classification. A comprehensive evaluation is conducted on a range of algorithms, including logistic regression, decision trees, support vector machines, and neural networks, using publicly available credit datasets. Within the research, a unified mathematical framework is introduced, which encompasses preprocessing techniques and critical algorithms such as Particle Swarm Optimization (PSO), the Light Gradient Boosting Model, and Extreme Gradient Boosting (XGB), among others. The focal point of the investigation is the LIME (Local Interpretable Model-agnostic Explanations) explainer. This study offers a comprehensive mathematical model using the LIME explainer, shedding light on its pivotal role in elucidating the intricacies of complex machine learning models. This study's empirical findings offer compelling evidence of the efficacy of these methodologies in credit scoring, with notable accuracies of 88.84%, 78.30%, and 77.80% for the Australian, German, and South German datasets, respectively. In summation, this research not only amplifies the significance of machine learning in credit scoring but also accentuates the importance of mathematical modeling and the LIME explainer, providing a roadmap for practitioners to navigate the evolving landscape of credit assessment. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
47. Visual analytics for monitoring credit scoring models.
- Author
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Baldo, Daiane Rodrigues, Regio, Murilo Santos, and Manssour, Isabel Harb
- Subjects
REQUIREMENTS engineering ,BANKING industry ,VISUAL analytics ,FINANCIAL institutions ,CREDIT risk ,SEMI-structured interviews - Abstract
Financial institutions use credit Scoring models to predict the default of their customers and assist in decision-making about the granting of credit. As a large volume of credit transactions is generated daily alongside a potential increase in this information with the advent of Open Finance, it is challenging to monitor this information quickly so we can act in case these models lose performance. Considering this context, our research aims to provide a Visual Analytics approach to assist in monitoring credit models. For this, initially, we carried out a systematic review of the literature on the subject and conducted semi-structured interviews with 13 domain experts. Considering the needs raised with this study, we created a prototype called Visual Analytics for monitoring Credit Scoring models (VACS). The main contributions of this work are twofold: The requirements gathered through interviews with specialists, which allowed the analysis of how the models are monitored within financial institutions, something that is not disclosed and that can help in the standardization of the monitoring process; and VACS, which was evaluated by four domain experts who considered it a very complete and easy-to-use tool. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
48. Application and optimization of deep learning in the credit score of auto finance
- Author
-
Wang Zhan
- Subjects
brnn ,logistic regression ,extreme gradient boosting tree ,deep learning ,credit scoring ,68m11 ,Mathematics ,QA1-939 - Abstract
In this paper, a credit scoring integration model incorporating BRNN is used to study the credit scoring problem in automobile finance. Aiming at the problems of existing credit scoring models constructed with shallow architecture and the unidirectional limitation of RNN itself, this paper introduces a BRNN model that superimposes RNN models in two directions. The potential relationship between each credit feature is mined through logistic regression, extreme gradient boosting tree, and bidirectional recurrent neural network algorithms, and the final prediction output is linked to the customer’s overall credit to improve the prediction accuracy. In this paper, we study the application of a credit scoring model based on the improved BRNN model for an auto finance company. Data preprocessing techniques and feature screening methods are used to improve the BRNN model and construct the credit scoring model for auto finance at Company A. The BRNN model is the basis for Company A’s credit scoring model. Based on the comparison with other models, it is concluded that the automobile finance credit scoring IBRNN model constructed based on the improved BRNN model in this paper has an accuracy of 89.6% in classifying the user finance data of Company A on different datasets, which is a significant improvement compared with the other five models.
- Published
- 2024
- Full Text
- View/download PDF
49. Predicting the Probability of Bankruptcy of Service Sector Enterprises Based on Ensemble Learning Methods
- Author
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Rodionov, Dmitriy, Pospelova, Aleksandra, Konnikov, Evgenii, Kryzhko, Darya, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Bencsik, Andrea, editor, and Kulachinskaya, Anastasia, editor
- Published
- 2023
- Full Text
- View/download PDF
50. Cost of Explainability in AI: An Example with Credit Scoring Models
- Author
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Dessain, Jean, Bentaleb, Nora, Vinas, Fabien, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, and Longo, Luca, editor
- Published
- 2023
- Full Text
- View/download PDF
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