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Applying deep learning method in TVP-VAR model under systematic financial risk monitoring and early warning

机译:在系统财务风险监测和预警下在系统财务风险监测下应用DEPP-VAR模型的深度学习方法

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In order to improve the effectiveness and accuracy of financial status indicators to measure the degree of fiscal tightening, financial market situation and systemic financial risk, the logistic regression method is used to screen the target variables of the indicators. The model improves the objectivity of the selection of target variables. The model chooses 18 alternative indicators such as three-month weighted average interest rate, national real estate prosperity index, money supply M2, declared effective exchange rate and Shenzhen Component Index, and establishes the financial status index. This model validates China' s financial situation from 2013 to 2017. The results indicate that the dynamic weighted financial condition index based on time-varying parameter vector autoregressive model includes five variables: interest rate, real estate price, money supply, exchange rate and stock price, which effectively reflect the actual financial situation of China. It also proves that the degree of fiscal tightening and financial market conditions can be measured and warned in advance by changes in financial indicators. To sum up, it can be concluded that it is necessary to pay attention to the changes of interest rates, real estate prices and stock prices when monitoring the systemic financial risks in China. In order to promote early warning and effectively control financial risks, China should establish an information system and a flexible macro-prudential supervision system. This study is of great significance to the prediction and supervision of systemic financial risks in China. (C) 2020 Elsevier B.V. All rights reserved.
机译:为了提高财务状况指标衡量财政紧缩程度、金融市场状况和系统性金融风险的有效性和准确性,采用logistic回归方法筛选指标的目标变量。该模型提高了目标变量选择的客观性。模型选择了三个月加权平均利率、全国房地产景气指数、货币供应量M2、公布有效汇率、深圳成分指数等18个备选指标,建立了财务状况指数。该模型验证了2013年至2017年中国的财务状况。结果表明,基于时变参数向量自回归模型的动态加权财务状况指数包含利率、房地产价格、货币供应量、汇率和股票价格五个变量,有效地反映了中国的实际财务状况。这也证明了财政紧缩的程度和金融市场状况可以通过财务指标的变化来提前衡量和预警。综上所述,在监测中国系统性金融风险时,有必要关注利率、房地产价格和股票价格的变化。为了促进金融风险预警和有效控制,中国应该建立信息系统和灵活的宏观审慎监管体系。本研究对我国系统性金融风险的预测和监管具有重要意义。(C) 2020爱思唯尔B.V.版权所有。

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