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Measuring systemic risk of the Chinese banking industry: A wavelet-based quantile regression approach

机译:衡量中国银行业的全身风险:基于小波的分位数回归方法

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摘要

In systemic risk measure, a large amount of literature has emerged, but few of them take into account the multi-scale natures of financial data. Considering these natures, we develop a novel W-QR-CoVaR method to measure systemic risk. To be specific, the W-QR-CoVaR method combines the wavelet multiresolution analysis (MRA) with the conditional value-at-risk (CoVaR) method based on the quantile regression (QR) framework. We then apply it to measure the systemic risk in the Chinese banking industry covering the period from September 2007 to September 2018. Our experiment results show that the hybrid W-QR-CoVaR method performs better than the traditional CoVaR method in terms of predictive accuracy. Furthermore, we also explore the relation between the systemic risk contribution of each individual bank and the bank-specific characteristics. Size and leverage appear to be the most robustness determinants. The findings suggest that regulators should pay more attention to the banks with smaller size and higher leverage.
机译:在系统性风险措施中,出现了大量的文学,但其中很少考虑到财务数据的多规模性质。考虑到这些性质,我们开发了一种新颖的W-QR-CoVAR方法来测量系统风险。具体而言,W-QR-COVAR方法将小波多分辨率分析(MRA)与基于量子回归(QR)框架的条件值 - 风险(CoVAR)方法相结合。然后,我们将其应用于衡量2007年9月至2018年9月期间的中国银行业的全身风险。我们的实验结果表明,在预测准确性方面,杂交W-QR-CoVar方法比传统的CoVAR方法更好地表现优于传统的CoVAR方法。此外,我们还探讨了每个单独银行和银行特征的系统风险贡献之间的关系。尺寸和杠杆似乎是最稳健的决定因素。调查结果表明,监管机构应更加注重较小规模和更高杠杆的银行。

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