Abstract

One of the most valid tasks in credit risk evaluation is the proper classification of potential good and bad customers. Reduction of the number of loans granted to companies of questionable credibility can significantly influence banks’ performance. An important element in credit risk assessment is a prior identification of factors which affect companies’ standing. Since that standing has an impact on credibility and solvency of entities. The research presented in the paper has two main goals. The first is to identify the most important factors (chosen financial ratios) which determine company’s performance and consequently influence its credit risk level when granted financial resources. The question also arises whether the line of business has any impact on factors that should be included in the analysis as the input. The other aim was to compare the results of chosen neural networks with credit scoring system used in a bank during credit risk decision-making process.

Highlights

  • Running a business is a constant process of decision making

  • The collected data was obtained from a bank operating on Polish market, the Commercial Court in Poznań, Poland and from NOTORIA SERWIS

  • Testing the neural networks on separate set of data proved that both types of network technique (NN) show good results, Multi-Layer Perceptron (MLP) performs slightly better than Radial Basis Function neural network (RBF)

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Summary

Summary

One of the most valid tasks in credit risk evaluation is the proper classification of potential good and bad customers. Reduction of the number of loans granted to companies of questionable credibility can significantly influence banks’ performance. An important element in credit risk assessment is a prior identification of factors which affect companies’ standing. Since that standing has an impact on credibility and solvency of entities. The first is to identify the most important factors (chosen financial ratios) which determine company’s performance and influence its credit risk level when granted financial resources. The question arises whether the line of business has any impact on factors that should be included in the analysis as the input. The other aim was to compare the results of chosen neural networks with credit scoring system used in a bank during credit risk decision-making process

Introduction
Methods
Research and findings
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