基于数据挖掘方法的中小企业信用风险评估

A. Matviychuk, Olha Artiukh
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摘要

本文致力于解决商业银行借款人—中小企业信用风险建模的科学性和实践性问题。乌克兰中小企业贷款的特点是高风险,但由于中小企业在社会经济方面的重要性,对贷款的需求正在增加,而且是必不可少的。这就是为什么需要使用智能数据分析的方法和模型。本文运用感知器型神经网络、逻辑回归和决策树等数据挖掘方法对其进行了研究和分析。本研究使用银行借款人数据库。特别是,21个企业活动的财务和经济指标被用于建模。本文对这些工具在解决既定问题时的有效性进行了比较分析。在研究过程中,将数据的一般总体随机分为一般样本和测试样本,每个样本都保持默认单位的比例。实验计算表明,人工智能方法(即感知器类型的神经网络)最适合评估企业贷款风险。为了比较模型的结果,使用以下值:common accuracy, AUC, GINI, specificity, sensitivity。文中还指出了模型中最重要的参数。研究结果为建立的评分模型在银行业的应用提供了建议,以降低中小企业信贷业务的风险水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ESTIMATION OF SME CREDIT RISKS BY DATA MINING METHODS
The article is devoted to solving the scientific and practical problem of modeling credit risks of borrowers of commercial banks – small and medium enterprises (SME). SME lending in Ukraine is characterized by high risk but the need for lending is increasing and essential, which is due to the socio-economic importance of SMEs. That is why there is a need to use methods and models of intelligent data analysis. Using data mining methods, that are perceptron-type neural networks, logistic regressions and decision trees, researched and analyzed in this paper. The database of bank borrowers was used for the research. In particular, 21 financial and economic indicators of enterprise activity were used for modeling. The article carries out a comparative effectiveness analysis of these tools in solving stated problem. During the research, the general population of data was randomly divided into a general and a test sample, and each of them kept the proportion of default units. The experimental calculations demonstrated the greatest suitability for assessing the risks of lending of enterprises the AI methods, namely neural nets of perceptron type. To compare the results of the models, the following values were used: common accuracy, AUC, GINI, specificity, sensitivity. The most significant parameters for the models are also indicated. The study results in recommendations for the application of the built scoring model in banking in order to reduce the level of SME credit operations riskiness.
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