%A XIONG Yi-peng, XIONG Zheng-de, YAO Zhu %T Under the Macroscopic Stress Test Commercial Bank Retail Credit Products PD Model Prediction Research %0 Journal Article %D 2020 %J Chinese Journal of Management Science %R 10.16381/j.cnki.issn1003-207x.2020.07.002 %P 13-22 %V 28 %N 7 %U {http://www.zgglkx.com/CN/abstract/article_16873.shtml} %8 2020-07-20 %X Stress testing is designated by the Basel Committee as an important tool for identifying, measuring and controlling liquidity risk and is an important part of the enterprise risk management framework. The China Banking Regulatory Commission also requires banks to establish a stress testing framework to effectively manage capital so that they hold sufficient capital to withstand risks at all stages of the economic cycle and assess potential losses in relatively extreme scenarios. However, the domestic retail banking stress test method has not yet fully unified the standard. The applicability of various measurement models under different scenarios needs further testing, and the study of the credit risk of retail banks is also discussed in combination with domestic macroeconomic variables. Based on Chinese macroeconomic operation rules, a bank's retail credit product policy and business operation mode are combined, as well as the availability of relevant historical data, to design a stress test plan for the retail credit portfolio. The stress test program has good operability and good decision-making reference value, which is extended to other similar retail banks to help modern retail banks strengthen risk management.The data of the housing mortgage default probability index are from the data of Bank A from 2012 to 2016, and the macro factor indicator data are from the data of China National Bureau of Statistics website from 2006 to 2016. By using house mortgage loan data collected from a commercial bank, a prediction model for probability of default is constructed based on macroeconomic indicators. Economic indicators that proved to be significant predictors to default probability are trained by value at risk model, including gross domestic product (GDP), consumer price index(CPI) and Herrick Payoff Index(HPI). Through observing the AICC value of the VAR model of different lag order combinations, the high order items of those indicators are used to build the regression equation and to do the stress test. The results show that the probability of default begin to increase slowly from the stressing point, and the largest increase occurs under the condition of severe stress. It is indicated that the factorial of macroeconomic factors can better capture the above characteristics, and the PD prediction model can accurately describe the risk conduction process, which can be a strong support to commercial bank for the risk management in retail businesses.