Recent financial disasters emphasised the need to investigate the consequences associated with the tail co-movements among institutions; episodes of contagion are frequently observed and increase the probability of large losses affecting market participants’ risk capital. Commonly used risk management tools fail to account for potential spillover effects among institutions because they only provide individual risk assessment. We contribute to the analysis of the interdependence effects of extreme events, providing an estimation tool for evaluating the co-movement Value-at-Risk. In particular, our approach relies on a Bayesian quantile regression framework. We propose a Markov chain Monte Carlo algorithm, exploiting the representation of the...
The dynamic evolution of tail–risk interdependence among institutions is of primary importance when ...
Quantile regression has important applications in risk management, portfolio optimization, and asset...
We use the Least Absolute Shrinkage and Selection Operator (LASSO) quantile regression technique to ...
We develop a new technique to estimate vector autoregressions with a common factor error structure b...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
Testing for Granger non-causality over varying quantile levels could be used to measure and infer dy...
This paper proposes methods for estimation and inference in multi-variate, multi-quantile models. Th...
This paper investigates the dynamic evolution of tail risk interdependence among U.S. banks, financi...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
An accurate assessment of tail dependencies of financial returns is key for risk management and port...
This article introduces a new model to analyze financial contagion based on a modified coexceedance ...
Financial risk control has always been challenging and becomes now an even harder problem as joint e...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
The dynamic evolution of tail–risk interdependence among institutions is of primary importance when ...
We propose a simple new semi-parametric approach to investigate whether co-dependence across markets...
The dynamic evolution of tail–risk interdependence among institutions is of primary importance when ...
Quantile regression has important applications in risk management, portfolio optimization, and asset...
We use the Least Absolute Shrinkage and Selection Operator (LASSO) quantile regression technique to ...
We develop a new technique to estimate vector autoregressions with a common factor error structure b...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
Testing for Granger non-causality over varying quantile levels could be used to measure and infer dy...
This paper proposes methods for estimation and inference in multi-variate, multi-quantile models. Th...
This paper investigates the dynamic evolution of tail risk interdependence among U.S. banks, financi...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
An accurate assessment of tail dependencies of financial returns is key for risk management and port...
This article introduces a new model to analyze financial contagion based on a modified coexceedance ...
Financial risk control has always been challenging and becomes now an even harder problem as joint e...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
The dynamic evolution of tail–risk interdependence among institutions is of primary importance when ...
We propose a simple new semi-parametric approach to investigate whether co-dependence across markets...
The dynamic evolution of tail–risk interdependence among institutions is of primary importance when ...
Quantile regression has important applications in risk management, portfolio optimization, and asset...
We use the Least Absolute Shrinkage and Selection Operator (LASSO) quantile regression technique to ...