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A dynamic approach merging network theory and credit risk techniques to assess systemic risk in financial networks

机译:融合网络理论和信用风险技术以评估金融网络中系统性风险的动态方法

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The interconnectedness of financial institutions affects instability and credit crises. To quantify systemic risk we introduce here the PD model, a dynamic model that combines credit risk techniques with a contagion mechanism on the network of exposures among banks. A potential loss distribution is obtained through a multi-period Monte Carlo simulation that considers the probability of default (PD) of the banks and their tendency of defaulting in the same time interval. A contagion process increases the PD of banks exposed toward distressed counterparties. The systemic risk is measured by statistics of the loss distribution, while the contribution of each node is quantified by the new measures PDRank and PDImpact. We illustrate how the model works on the network of the European Global Systemically Important Banks. For a certain range of the banks’ capital and of their assets volatility, our results reveal the emergence of a strong contagion regime where lower default correlation between banks corresponds to higher losses. This is the opposite of the diversification benefits postulated by standard credit risk models used by banks and regulators who could therefore underestimate the capital needed to overcome a period of crisis, thereby contributing to the financial system instability.
机译:金融机构的相互联系会影响不稳定和信贷危机。为了量化系统性风险,我们在这里引入PD模型,这是一种动态模型,将信用风险技术与银行风险敞口网络上的传染机制相结合。通过多周期蒙特卡洛模拟获得潜在损失分布,该模拟考虑了银行在相同时间间隔内的违约概率(PD)及其违约趋势。传染过程增加了陷入困境的交易对手的银行的违约概率。系统性风险通过损失分布的统计数据来衡量,而每个节点的贡献则通过新的度量PDRank和PDImpact进行量化。我们说明了该模型如何在欧洲全球系统重要银行的网络上工作。对于一定范围的银行资本和资产波动性,我们的结果表明出现了一种强有力的传染机制,其中银行之间的违约相关性越低,损失越高。这与银行和监管机构所采用的标准信用风险模型所假设的多元化收益相反,因此,银行和监管机构可能会低估克服危机时期所需的资金,从而加剧金融体系的不稳定。

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