We propose a novel approach to calibrate the conditional value-at-risk (CoVaR) of financial institutions based on neural network quantile regression. Building on the estimation results, we model systemic risk spillover effects in a network context across banks by considering the marginal effects of the quantile regression procedure. An out-of-sample analysis shows great performance compared to a linear baseline specification, signifying the importance that nonlinearity plays for modelling systemic risk. We then propose three network-based measures from our fitted results. First, we use the Systemic Network Risk Index (SNRI) as a measure for total systemic risk. A comparison to the existing network-based risk measures reveals that our approa...
Measuring interconnectedness in a banking system to identify the potential transmission channels of ...
This paper extends the Conditional Value-at-Risk approach of Adrian and Brunnermeier (2011) by allow...
We propose a dynamic model for systemic risk using a bipartite network of banks and assets in which ...
We propose a novel approach to calibrate the conditional value-at-risk (CoVaR) of financial institut...
Wir entwickeln einen neuen Ansatz zur Schätzung vom Conditional Value-at-Risk (CoVaR) von Finanzinst...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This paper considers several network measures of connectedness applied to the network extracted usin...
CoVaR is one of the most popular measures of systemic risk. It is the VaR (Value at Risk) of the sys...
This paper considers several network measures of connectedness applied to the network extracted usin...
The interdependence, dynamics and riskiness of financial institutions are the key features frequentl...
In Colombia, the exposition to market risk has increased significantly since 2009. Nonetheless, the ...
Financial instability and its destructive effects on the economy can lead to financial crises due to...
We extend the linear quantile regression with a neural network structure to enable more flexibility ...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This thesis presents methodological contributions for the quantification of systemic risk in financi...
Measuring interconnectedness in a banking system to identify the potential transmission channels of ...
This paper extends the Conditional Value-at-Risk approach of Adrian and Brunnermeier (2011) by allow...
We propose a dynamic model for systemic risk using a bipartite network of banks and assets in which ...
We propose a novel approach to calibrate the conditional value-at-risk (CoVaR) of financial institut...
Wir entwickeln einen neuen Ansatz zur Schätzung vom Conditional Value-at-Risk (CoVaR) von Finanzinst...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This paper considers several network measures of connectedness applied to the network extracted usin...
CoVaR is one of the most popular measures of systemic risk. It is the VaR (Value at Risk) of the sys...
This paper considers several network measures of connectedness applied to the network extracted usin...
The interdependence, dynamics and riskiness of financial institutions are the key features frequentl...
In Colombia, the exposition to market risk has increased significantly since 2009. Nonetheless, the ...
Financial instability and its destructive effects on the economy can lead to financial crises due to...
We extend the linear quantile regression with a neural network structure to enable more flexibility ...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This thesis presents methodological contributions for the quantification of systemic risk in financi...
Measuring interconnectedness in a banking system to identify the potential transmission channels of ...
This paper extends the Conditional Value-at-Risk approach of Adrian and Brunnermeier (2011) by allow...
We propose a dynamic model for systemic risk using a bipartite network of banks and assets in which ...