An accurate assessment of tail dependencies of financial returns is key for risk management and portfolio allocation. In this paper we consider a multiple linear quantile regression setting for joint prediction of tail risk measures, namely Value at Risk(Var) and Expected Shortfall (ES) using a generalization of the Multivariare Asymmetric Laplace distribution. The proposed method permits simultaneous modelling of multiple conditional quantiles of a multivariate response variable and allows to study the dependence structure among financial assets at different quantile levels. Subsequently, we introduce an original method for portfolio construction where we show that the portfolio returns follow a univariate asymmetric Laplace density. An e...
The high level of integration of international financial markets highlights the need to accurately a...
Recent financial disasters emphasised the need to investigate the consequences associated with the t...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
In this paper, we propose a multivariate quantile regression framework to forecast Value at Risk (Va...
An accurate assessment of tail dependencies of financial returns is key for risk management and port...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
In financial research and among risk management practitioners the estimation of a correct measure of...
A new semi-parametric Expected Shortfall (ES) estimation and forecasting framework is proposed. The ...
This paper proposes methods for estimation and inference in multi-variate, multi-quantile models. Th...
Combining provides a pragmatic way of synthesising the information provided by individual forecastin...
International audienceWe consider an inference method for prediction based on belief functions in qu...
The high level of integration of international financial markets highlights the need to accurately a...
Recent financial disasters emphasised the need to investigate the consequences associated with the t...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
In this paper, we propose a multivariate quantile regression framework to forecast Value at Risk (Va...
An accurate assessment of tail dependencies of financial returns is key for risk management and port...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
In financial research and among risk management practitioners the estimation of a correct measure of...
A new semi-parametric Expected Shortfall (ES) estimation and forecasting framework is proposed. The ...
This paper proposes methods for estimation and inference in multi-variate, multi-quantile models. Th...
Combining provides a pragmatic way of synthesising the information provided by individual forecastin...
International audienceWe consider an inference method for prediction based on belief functions in qu...
The high level of integration of international financial markets highlights the need to accurately a...
Recent financial disasters emphasised the need to investigate the consequences associated with the t...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...