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Data mining for assessing the credit risk of local government units in Croatia

机译:数据挖掘,用于评估克罗地亚地方政府部门的信用风险

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摘要

Over the past few decades, data mining techniques, especially artificial neural networks, have been used for modelling many real-world problems. This paper aims to test the performance of three methods: (1) an artificial neural network (ANN), (2) a hybrid artificial neural network and genetic algorithm approach (ANN-GA), and (2) the Tobit regression approach in determining the credit risk of local government units in Croatia. The evaluation of credit risk and prediction of debtor bankruptcy have long been regarded as an important topic in accounting and finance literature. In this research, credit risk is modelled under a regression approach unlike typical credit risk analysis, which is generally viewed as a classification problem. Namely, a standard evaluation of credit risk is not possible due to a lack of bankruptcy data. Thus, the credit risk of a local unit is approximated using the ratio of outstanding liabilities maturing in a given year to total expenditure of the local unit in the same period. The results indicate that the ANN-GA hybrid approach performs significantly better than the Tobit model by providing a significantly smaller average mean squared error. This work is beneficial to researchers and the government in evaluating a local government unit’s credit score.
机译:在过去的几十年中,数据挖掘技术(尤其是人工神经网络)已用于对许多现实问题进行建模。本文旨在测试三种方法的性能:(1)人工神经网络(ANN),(2)混合人工神经网络和遗传算法方法(ANN-GA),以及(2)Tobit回归方法用于确定克罗地亚地方政府部门的信用风险。长期以来,信用风险的评估和债务人破产的预测一直是会计和财务文献中的重要课题。在这项研究中,与典型的信用风险分析不同,信用风险是通过回归方法建模的,而典型的信用风险分析通常被视为分类问题。即,由于缺乏破产数据,不可能进行信用风险的标准评估。因此,使用给定年份到期的未偿债务与同期同一时期本地单位总支出的比率来估算本地单位的信用风险。结果表明,通过提供明显较小的平均均方误差,ANN-GA混合方法的性能明显优于Tobit模型。这项工作对研究人员和政府评估地方政府部门的信用评分很有帮助。

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