Credit and Loan Approval Classification Using a Bio-Inspired Neural Network (2024)

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Mourtas, S. D., Katsikis, V. N., Stanimirović, P. S., & Kazakovtsev, L. A. (2024). Credit and Loan Approval Classification Using a Bio-Inspired Neural Network. Biomimetics, 9. Copy athttp://www.tinyurl.com/22jx5bbw

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Abstract:

Numerous people are applying for bank loans as a result of the banking industry’s expansion, but because banks only have a certain amount of assets to lend to, they can only do so to a certain number of applicants. Therefore, the banking industry is very interested in finding ways to reduce the risk factor involved in choosing the safe applicant in order to save lots of bank resources. These days, machine learning greatly reduces the amount of work needed to choose the safe applicant. Taking this into account, a novel weights and structure determination (WASD) neural network has been built to meet the aforementioned two challenges of credit approval and loan approval, as well as to handle the unique characteristics of each. Motivated by the observation that WASD neural networks outperform conventional back-propagation neural networks in terms of sluggish training speed and being stuck in local minima, we created a bio-inspired WASD algorithm for binary classification problems (BWASD) for best adapting to the credit or loan approval model by utilizing the metaheuristic beetle antennae search (BAS) algorithm to improve the learning procedure of the WASD algorithm. Theoretical and experimental study demonstrate superior performance and problem adaptability. Furthermore, we provide a complete MATLAB package to support our experiments together with full implementation and extensive installation instructions.

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National and Kapodistrian University of Athens
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Email: vaskatsikis@econ.uoa.gr
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Credit and Loan Approval Classification Using a Bio-Inspired Neural Network (1)

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Recent Publications

Jerbi, H., Al-Darraji, I., Albadran, S., Aoun, S. B., Simos, T. E., Mourtas, S. D., & Katsikis, V. N. (2024). Solving quaternion nonsymmetric algebraic Riccati equations through zeroing neural networks. AIMS Mathematics, 9, 5794-5809. Website

Mourtas, S. D., Katsikis, V. N., Stanimirović, P. S., & Kazakovtsev, L. A. (2024). Credit and Loan Approval Classification Using a Bio-Inspired Neural Network. Biomimetics, 9. WebsiteAbstract

Numerous people are applying for bank loans as a result of the banking industry’s expansion, but because banks only have a certain amount of assets to lend to, they can only do so to a certain number of applicants. Therefore, the banking industry is very interested in finding ways to reduce the risk factor involved in choosing the safe applicant in order to save lots of bank resources. These days, machine learning greatly reduces the amount of work needed to choose the safe applicant. Taking this into account, a novel weights and structure determination (WASD) neural network has been built to meet the aforementioned two challenges of credit approval and loan approval, as well as to handle the unique characteristics of each. Motivated by the observation that WASD neural networks outperform conventional back-propagation neural networks in terms of sluggish training speed and being stuck in local minima, we created a bio-inspired WASD algorithm for binary classification problems (BWASD) for best adapting to the credit or loan approval model by utilizing the metaheuristic beetle antennae search (BAS) algorithm to improve the learning procedure of the WASD algorithm. Theoretical and experimental study demonstrate superior performance and problem adaptability. Furthermore, we provide a complete MATLAB package to support our experiments together with full implementation and extensive installation instructions.

He, Y., Dong, X., Simos, T. E., Mourtas, S. D., Katsikis, V. N., Lagios, D., Zervas, P., et al. (2024). A bio-inspired weights and structure determination neural network for multiclass classification: Applications in occupational classification systems. AIMS Mathematics, 9, 2411-2434. Website

Jerbi, H., Alshammari, O., Aoun, S. B., Kchaou, M., Simos, T. E., Mourtas, S. D., & Katsikis, V. N. (2024). Hermitian Solutions of the Quaternion Algebraic Riccati Equations through Zeroing Neural Networks with Application to Quadrotor Control. Mathematics, 12. WebsiteAbstract

The stability of nonlinear systems in the control domain has been extensively studied using different versions of the algebraic Riccati equation (ARE). This leads to the focus of this work: the search for the time-varying quaternion ARE (TQARE) Hermitian solution. The zeroing neural network (ZNN) method, which has shown significant success at solving time-varying problems, is used to do this. We present a novel ZNN model called ’ZQ-ARE’ that effectively solves the TQARE by finding only Hermitian solutions. The model works quite effectively, as demonstrated by one application to quadrotor control and three simulation tests. Specifically, in three simulation tests, the ZQ-ARE model finds the TQARE Hermitian solution under various initial conditions, and we also demonstrate that the convergence rate of the solution can be adjusted. Furthermore, we show that adapting the ZQ-ARE solution to the state-dependent Riccati equation (SDRE) technique stabilizes a quadrotor’s flight control system faster than the traditional differential-algebraic Riccati equation solution.

Gerontitis, D., Mo, C., Stanimirović, P. S., & Katsikis, V. N. (2024). Improved zeroing neural models based on two novel activation functions with exponential behavior. Theoretical Computer Science, 986, 114328. WebsiteAbstract

A family of zeroing neural networks based on new nonlinear activation functions is proposed for solving various time-varying linear matrix equations (TVLME). The proposed neural network dynamical systems, symbolized as Li-VPZNN1 and Li-VPZNN2, include an exponential parameter in nonlinear activation function (AF) that leads to faster convergence to the theoretical result compared to previous categories of nonlinearly activated neural networks. Theoretical analysis as well as numerical tests in MATLAB's environment confirm the efficiency and accelerated convergence property of the novel dynamics.

Stanimirović, P. S., Mourtas, S. D., Mosić, D., Katsikis, V. N., Cao, X., & Li, S. (2024). Zeroing neural network approaches for computing time-varying minimal rank outer inverse. Applied Mathematics and Computation, 465, 128412. WebsiteAbstract

Generalized inverses are extremely effective in many areas of mathematics and engineering. The zeroing neural network (ZNN) technique, which is currently recognized as the state-of-the-art approach for calculating the time-varying Moore-Penrose matrix inverse, is investigated in this study as a solution to the problem of calculating the time-varying minimum rank outer inverse (TV-MROI) with prescribed range and/or TV-MROI with prescribed kernel. As a result, four novel ZNN models are introduced for computing the TV-MROI, and their efficiency is examined. Numerical tests examine and validate the effectiveness of the introduced ZNN models for calculating TV-MROI with prescribed range and/or prescribed kernel.

Gupta, R., Bartolucci, F., Katsikis, V. N., & Patnaik, S. (2023). Recent Advancements in Computational Finance and Business Analytics (1st ed., pp. 300). Springer Cham. Publisher's Version

Aoun, S. B., Derbel, N., Jerbi, H., Simos, T. E., Mourtas, S. D., & Katsikis., V. N. (2023). A quaternion Sylvester equation solver through noise-resilient zeroing neural networks with application to control the SFM chaotic system. AIMS Mathematics, 8(11). Publisher's Version

Cao, X., Peng, C., Zheng, Y., Li, S., Ha, T. T., Shutyaev, V., Katsikis, V. N., et al. (2023). Neural Networks for Portfolio Analysis in High-Frequency Trading. IEEE Transactions on Neural Networks and Learning Systems, 1-10.

Kovalnogov, V. N., Fedorov, R. V., Shepelev, I. I., Sherkunov, V. V., Simos, T. E., Mourtas, S. D., & Katsikis, V. N. (2023). A novel quaternion linear matrix equation solver through zeroing neural networks with applications to acoustic source tracking. AIMS Mathematics, 8, 25966-25989. WebsiteAbstract

Due to its significance in science and engineering, time-varying linear matrix equation (LME) problems have received a lot of attention from scholars. It is for this reason that the issue of finding the minimum-norm least-squares solution of the time-varying quaternion LME (ML-TQ-LME) is addressed in this study. This is accomplished using the zeroing neural network (ZNN) technique, which has achieved considerable success in tackling time-varying issues. In light of that, two new ZNN models are introduced to solve the ML-TQ-LME problem for time-varying quaternion matrices of arbitrary dimension. Two simulation experiments and two practical acoustic source tracking applications show that the models function superbly.

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Credit and Loan Approval Classification Using a Bio-Inspired Neural Network (2024)

FAQs

What are the advantages of loan approval prediction using machine learning? ›

Benefits of Loan Approval Prediction Using Machine Learning

Loan approval prediction using machine learning will offer lenders many benefits. Lenders can improve the accuracy of creditworthiness assessments, reduce the risk of defaults, and improve overall portfolio quality.

What is credit approval based on? ›

Generally, these factors include borrowers' income and debt levels, credit score (if obtained), and credit history, as well as loan size, collateral value (including valuation methodology), and lien position.

What is credit approval system? ›

Borrowers must complete a process called credit approval in order to qualify for a loan. Through this process, a lender assesses the ability and willingness of a borrower to fully repay (interest and principal) a loan on time.

What is ANNs? ›

Neural networks are sometimes called artificial neural networks (ANNs) or simulated neural networks (SNNs). They are a subset of machine learning, and at the heart of deep learning models.

Which algorithm is best for loan prediction? ›

We trained the model first and evaluate a range of machine learning algorithms, including logistic regression, decision trees, random forests, and neural networks. We find that all these algorithms can predict loan approval with good accuracy, with the best performance achieved by the random forest model.

Which model is best for loan prediction? ›

Now that we have determined that SVM, XGBoost, and Random Forest are some of the best performing ML models for performing loan prediction and building a beginner's loan prediction machine learning project, let's see more details of what each model found in our loan prediction dataset.

What are the 3 C's of credit approval? ›

The factors that determine your credit score are called The Three C's of Credit – Character, Capital and Capacity.

What are the 5 C's of credit approval? ›

The five Cs of credit are character, capacity, capital, collateral, and conditions.

Why is credit approval important? ›

Lenders use your credit score to determine whether they are willing to loan you money and, in many cases, what interest rate you will be charged. The higher your score, the less risky you appear as a borrower and the more likely you are to receive approval for new accounts and to receive a favorable interest rate.

What are the stages of loan approval? ›

Most people go through six distinct stages when they are looking for a new mortgage: pre-approval, house shopping, mortgage application, loan processing, underwriting, and closing. In this guide, we'll explain everything you need to know about each of these steps.

How does loan approval work? ›

Lenders will look at your credit score (also known as your credit rating) when deciding whether to lend you money. It's based on things like how much you've borrowed in the past, your previous applications for credit and if you've missed payments on things like credit cards, bills or loans.

How can I improve my credit approval process? ›

Pay all your bills on time

Your payment history is the most important factor in determining your credit score. A good credit score will increase your odds of being approved for a credit card as lenders like to see that you can manage an additional line of credit and make monthly payments on what you charge.

What is an example of an ANN neural network? ›

Artificial neural networks are trained using a training set. For example, suppose you want to teach an ANN to recognize a cat. Then it is shown thousands of different images of cats so that the network can learn to identify a cat.

What is the difference between NLP and ANN? ›

Artificial Neural Networks (ANN) -refers to models of human neural networks that are designed to help computers learn. Natural Language Processing (NLP) -refers to systems that can understand language.

Is ChatGPT a neural network? ›

ChatGPT primarily utilizes neural networks as its underlying technology. Neural networks are a type of artificial intelligence model that are capable of learning patterns and making predictions based on large amounts of data.

What are the benefits of machine learning in prediction? ›

Machine learning can analyze large amounts of data very quickly and identify patterns that are not visible to humans. This can lead to more accurate predictions than traditional methods. Renaissance Technologies has used machine learning to great effect in this area.

What are the advantages of loan eligibility prediction? ›

It will benefit both the client and the bank in terms of time and manpower required for loan eligibility prediction. The entire work is cantered on a classification problem and is a form of supervised learning in which it is important to determine whether the loan will be approved or not.

Why machine learning is best for prediction? ›

Benefits of machine learning in predictive analytics

This is because machine learning algorithms can learn patterns and relationships in data that may not be apparent to human analysts. Machine learning algorithms can also adapt to changing patterns in data and improve their accuracy over time.

Why machine learning is used for prediction? ›

Machine learning model predictions allow businesses to make highly accurate guesses as to the likely outcomes of a question based on historical data, which can be about all kinds of things – customer churn likelihood, possible fraudulent activity, and more.

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