A comprehensive method for credit risk assessment of small and medium-sized enterprises based on Asian data

N. Yoshino, Farhad Taghizadeh‐Hesary
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引用次数: 7

Abstract

Due to the asymmetry of information between borrowers that are smallor medium-sized enterprises (SMEs) and lenders (banks), many banks are considering this sector as a risky sector. It is crucial for banks to be able to distinguish healthy from risky companies in order to reduce their nonperforming assets in the SME sector. If they can do this, lending and financing to SMEs through banks will be easier with lower collateral requirements and lower interest rates. In this paper, we provide a scheme originally developed by Yoshino and Taghizadeh-Hesary (2014) for assigning credit ratings to SMEs by employing two statistical analysis techniques—principal component analysis and cluster analysis—applying 11 financial ratios of 1,363 SMEs in Asia. If used by the financial institutions, this comprehensive and efficient method could enable banks and other lending agencies around the world, and especially in Asia, to group SME customers based on financial health, adjust interest rates on loans, and set lending ceilings for each group.
基于亚洲数据的中小企业信用风险综合评估方法
由于借款人(中小企业)和贷方(银行)之间的信息不对称,许多银行将该行业视为高风险行业。为了减少中小企业领域的不良资产,银行能够区分健康企业和风险企业,这一点至关重要。如果他们能做到这一点,通过银行向中小企业提供贷款和融资将更容易,抵押品要求更低,利率也更低。在本文中,我们提供了一个最初由吉野和Taghizadeh-Hesary(2014)开发的方案,通过采用两种统计分析技术-主成分分析和聚类分析-应用亚洲1,363家中小企业的11个财务比率,为中小企业分配信用评级。如果由金融机构使用,这种全面而有效的方法可以使世界各地的银行和其他贷款机构,特别是亚洲的银行和其他贷款机构,根据财务状况对中小企业客户进行分组,调整贷款利率,并为每个群体设定贷款上限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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