We propose a shrinkage and selection methodology specifically designed for network inference using high dimensional data through a regularised linear regression model with Spike-and-Slab prior on the parameters. The approach extends the case where the error terms are heteroscedastic, by adding an ARCH-type equation through an approximate Expectation-Maximisation algorithm. The proposed model accounts for two sets of covariates. The first set contains predetermined variables which are not penalised in the model (i.e., the autoregressive component and common factors) while the second set of variables contains all the (lagged) financial institutions in the system, included with a given probability. The financial linkages are expressed in terms...
We propose a Bayesian approach to the problem of variable selection and shrinkage in high dimensiona...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This paper is concerned with reconstructing weighted directed networks from the total in- and out-we...
We propose a shrinkage and selection methodology specifically designed for network inference using h...
We propose a Bayesian approach to the problem of variable selection and shrinkage in high dimensiona...
Network analysis is becoming a fundamental tool in the study of systemic risk and financial contagio...
After the 2008 financial crisis, researchers found it’s necessary to understand the financial market...
Connectedness in a financial network refers to the structure of interlinkages among the financial in...
To understand risk in a financial market we must understand how asset prices are related. By using c...
In this article, we first generalize the Conditional Auto-Regressive Expected Shortfall (CARES) mode...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
International audienceIn this article, we first generalize the Conditional Auto-Regressive Expected ...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
Network theory is a powerful tool for the analysis of complex systems, and in recent years a growing...
Networks represent a useful tool to describe relationships among financial firms and network analysi...
We propose a Bayesian approach to the problem of variable selection and shrinkage in high dimensiona...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This paper is concerned with reconstructing weighted directed networks from the total in- and out-we...
We propose a shrinkage and selection methodology specifically designed for network inference using h...
We propose a Bayesian approach to the problem of variable selection and shrinkage in high dimensiona...
Network analysis is becoming a fundamental tool in the study of systemic risk and financial contagio...
After the 2008 financial crisis, researchers found it’s necessary to understand the financial market...
Connectedness in a financial network refers to the structure of interlinkages among the financial in...
To understand risk in a financial market we must understand how asset prices are related. By using c...
In this article, we first generalize the Conditional Auto-Regressive Expected Shortfall (CARES) mode...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
International audienceIn this article, we first generalize the Conditional Auto-Regressive Expected ...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
Network theory is a powerful tool for the analysis of complex systems, and in recent years a growing...
Networks represent a useful tool to describe relationships among financial firms and network analysi...
We propose a Bayesian approach to the problem of variable selection and shrinkage in high dimensiona...
CoVaR is a measure for systemic risk of the networked financial system conditional on institutions b...
This paper is concerned with reconstructing weighted directed networks from the total in- and out-we...