Recent financial crises have put an increased emphasis on methods devoted to risk management. Among a plethora of risk measures proposed in literature, the Value-at-Risk (VaR) plays still today a prominent role. Despite some criticisms, the VaR measures are fundamental in order to adequately set aside risk capital. For this reason, during the last decades the literature has been interested in proposing as much as possible accurate VaR models. Recently, the quantile regression approach has been used to directly forecast the VaR measures. We embed the linear AutoRegressive Conditional Heteroscedasticity (ARCH) model with MIDAS (MI(xed)-DA(ta) Sampling) term in such a quantile regression (QR) framework. The proposed model, named Quantile ARCH-...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
This Thesis is the result of my Master Degree studies at the Graduate School of Economics, Getúlio V...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Recent financial crises have put an increased emphasis on methods devoted to risk management. Among ...
Recent financial crises have put an increased emphasis on methods devoted to risk management. Among...
Recent financial crises have placed an increased accent on methods dealing with risk management. Des...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
Value at Risk (VaR) has become the standard measure of market risk employed by financial institution...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
Most of the literature on Value at Risk concentrates on the unconditional nonparametric or parametri...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
This Thesis is the result of my Master Degree studies at the Graduate School of Economics, Getúlio V...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Recent financial crises have put an increased emphasis on methods devoted to risk management. Among ...
Recent financial crises have put an increased emphasis on methods devoted to risk management. Among...
Recent financial crises have placed an increased accent on methods dealing with risk management. Des...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
Value at Risk (VaR) has become the standard measure of market risk employed by financial institution...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
Most of the literature on Value at Risk concentrates on the unconditional nonparametric or parametri...
This paper studies the performance of nonparametric quantile regression as a tool to predict Value a...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
A framework is introduced allowing us to apply nonparametric quantile regression to Value at Risk (V...
This Thesis is the result of my Master Degree studies at the Graduate School of Economics, Getúlio V...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...