This paper develops a new class of dynamic models for forecasting extreme financial risk. This class of models is driven by the score of the conditional distribution with respect to both the duration between extreme events and the magnitude of these events. It is shown that the models are a feasible method for modeling the time-varying arrival intensity and magnitude of extreme events. It is also demonstrated how exogenous variables such as realized measures of volatility can easily be incorporated. An empirical analysis based on a set of major equity indices shows that both the arrival intensity and the size of extreme events vary greatly during times of market turmoil. The proposed framework performs well relative to competing approaches ...
This article reviews methods from extreme value analysis with applications to risk assessment in fin...
This paper conducts a comparative evaluation of the predictive performance of various Value-at-Risk ...
In this thesis the main purpose is to use extreme value theory and time series analysis to find mode...
A range of statistical models for the joint distribution of different financial market returns has b...
This paper develops an unconditional and conditional extreme value approach to calculating value at ...
The phenomenon of the occurrence of rare yet extreme events, “Black Swans ” in Taleb’s ter-minology,...
The ability to model extreme events is important across many applications, including extreme weather...
none2noOne of the key components of financial risk management is risk measurement. This typically re...
<p>The global financial crisis of 2007–2009 revealed the great extent to which systemic risk can jeo...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
Forecasting the risk of extreme losses is an important issue in the management of financial risk and...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/98332/1/asmb1915.pd
This paper presents extreme value theory and its application to the computation of the value at risk...
This article introduces a new approach for estimating Value at Risk (VaR), which is then used to sho...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
This article reviews methods from extreme value analysis with applications to risk assessment in fin...
This paper conducts a comparative evaluation of the predictive performance of various Value-at-Risk ...
In this thesis the main purpose is to use extreme value theory and time series analysis to find mode...
A range of statistical models for the joint distribution of different financial market returns has b...
This paper develops an unconditional and conditional extreme value approach to calculating value at ...
The phenomenon of the occurrence of rare yet extreme events, “Black Swans ” in Taleb’s ter-minology,...
The ability to model extreme events is important across many applications, including extreme weather...
none2noOne of the key components of financial risk management is risk measurement. This typically re...
<p>The global financial crisis of 2007–2009 revealed the great extent to which systemic risk can jeo...
In this paper, we propose a new approach to extreme value modelling for the forecasting of Value-at-...
Forecasting the risk of extreme losses is an important issue in the management of financial risk and...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/98332/1/asmb1915.pd
This paper presents extreme value theory and its application to the computation of the value at risk...
This article introduces a new approach for estimating Value at Risk (VaR), which is then used to sho...
This paper presents a model for the joint distribution of a portfolio by inferring extreme movements...
This article reviews methods from extreme value analysis with applications to risk assessment in fin...
This paper conducts a comparative evaluation of the predictive performance of various Value-at-Risk ...
In this thesis the main purpose is to use extreme value theory and time series analysis to find mode...