Abstract

Predictions of credit risk, model reliability, monitoring, and efficient loan processing are all important factors in decision-making and transparency. Machine learning method is providing these people new hope. However, it is up to banking or nonbanking institutions to determine how they will implement this advanced method in order to decrease human biases in loan decision-making. Objective. This paper proposed the novel machine learning-based credit risk analysis in the digital banking evaluation model. The purpose of this research is to compare various ML algorithms in order to develop an accurate model for credit risk assessment utilising data from a genuine credit registry dataset. Aim is to design the classification-based model using particle swarm optimization (PSO) algorithm with structure decision tree learning (SDTL) in predicting credit risk. This system has the potential to improve quality criteria such as dependability, robustness, extensibility, and scalability. Features have been extracted and classified by the proposed PSO_SL model. Experimental Results. The data have been collected based on real time for credit analysis. Simulation is carried out in Python and optimal results are obtained in comparative analysis with existing techniques. The accuracy obtained by proposed technique is enhanced and the error rate of the design is minimized.

Highlights

  • Because of the increase of rural markets, credit penetration among farmers is gaining traction, and it is becoming recognised as a growth engine for a rising economy such as India

  • General Data Protection Regulation (GDPR). e dataset serves as the hub for all credit in the country, collecting data from all commercial banks and savings institutions

  • Because the feature extraction and preprocessing step is so important for the overall performance of machine learning models, it must be customised for datasets from various fields

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Summary

Introduction

Because of the increase of rural markets, credit penetration among farmers is gaining traction, and it is becoming recognised as a growth engine for a rising economy such as India. Zhou et al and Lowd and Davis [6, 7] suggested a particle swarm optimization algorithm-based financial credit risk assessment technique. Kovvuri and Cheripelli [12] utilized a loan dataset from a commercial bank to test five various ML methods for credit risk assessment, including RF, KNN, NB, DT, and logistic regression.

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