Abstract

The government makes great efforts to maintain the soundness of policy funds raised by the national budget and lent to corporate. In general, previous research on the prediction of company insolvency has dealt with large and listed companies using financial information with conventional statistical techniques. However, small- and medium-sized enterprises (SMEs) do not have to undergo mandatory external audits, and the quality of accounting information is low due to weak internal control. To overcome this problem, we developed an insolvency prediction model for SMEs using data mining techniques and technological feasibility assessment information as non-financial information. We divided the dataset into two types of data based on three years of corporate age. The synthetic minority over-sampling technique (SMOTE) was used to solve the data imbalance that occurred at this time. Six insolvency prediction models were created using logistic regression, a decision tree, an artificial neural network, and an ensemble (i.e., boosting) of each algorithm. By applying a boosted decision tree, the best accuracies of 69.1% and 82.7% were derived, and by applying a decision tree, nine and seven influential factors affected the insolvency of SMEs established for fewer than three years and more than three years, respectively. In addition, we derived several insolvency rules for the two types of SMEs from the decision tree-based prediction model and proposed ways to enhance the health of loans given to potentially insolvent companies using these derived rules. The results of this study show that it is possible to predict SMEs’ insolvency using data mining techniques with technological feasibility assessment information and find meaningful rules related to insolvency.

Highlights

  • A company bankrupted due to its insolvency faces a very important event causing economic losses for various stakeholders, including shareholders, investors, and creditors

  • Research conducted in South Korea to predict company insolvency has focused primarily on companies listed on the Korea Exchange (KRX) and Korea Securities Dealers Automated Quotation (KOSDAQ)

  • A decision tree, and an artificial neural network are used as an algorithm for building prediction models, and the ensemble technique, boosting, was applied to these three algorithms, thereby resulting in a total of six predictive models

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Summary

Introduction

A company bankrupted due to its insolvency faces a very important event causing economic losses for various stakeholders, including shareholders, investors, and creditors. In case of a bankruptcy, it is hard to receive full legal compensation, and accumulated resources such as manufactured capital, human capital (e.g., education, knowledge, and science) and social capital (e.g., administration, social trust, and networks) by the company disappear For these reasons, sustainability in business operations is very important to prevent social losses due to legal procedures such as liquidation proceedings and restructuring proceedings [1]. Research conducted in South Korea to predict company insolvency has focused primarily on companies listed on the Korea Exchange (KRX) and Korea Securities Dealers Automated Quotation (KOSDAQ) The reason for this is that it is easy to collect information about these companies from financial statements provided by the Financial Supervisory Service’s Data Analysis Retrieval and Transfer System (dart.fss.or.kr), news provided by various media outlets, industry trends report, and social media. It is less appropriate to use financial information to predict SMEs’ insolvency, and there is a need to explore new information that enables SMEs to make insolvency predictions based on their latest activities

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