This thesis examines the use of quantile methods to better estimate the time-varying conditional asset return distribution. The motivation for this is to contribute to improvements in the time series forecasting by taking into account some features of financial returns. We first consider a single quantile model with a long memory component in order to estimate the Value at Risk (VaR). We find that the model provides us with improved estimates and forecasts, and has valuable economic interpretation for the firm’s capital allocation. We also present improvements in the economic performance of existing models through the use of past aggregate return information in VaR estimation. Additionally, we attempt to make a contribution by examining som...
Value at Risk (VaR) has become the standard measure of market risk employed by financial institution...
This paper investigates how the conditional quantiles of future returns and volatility of financial ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Most of the literature on Value at Risk concentrates on the unconditional nonparametric or parametri...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
We introduce a newly developed quantilefunction model that can be used for estimating conditionaldis...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
The central theme of the entire thesis is to explore new ways of modelling the time-varying conditio...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
This paper investigates a nonparametric approach for estimating conditional quantiles of time serie...
Value at risk models are concerned with the estimation of conditional quantiles of a time series. Fo...
We study alternative dynamics for Value at Risk (VaR) that incorporate a slow moving component and i...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
Value at Risk (VaR) has become the standard measure of market risk employed by financial institution...
This paper investigates how the conditional quantiles of future returns and volatility of financial ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Most of the literature on Value at Risk concentrates on the unconditional nonparametric or parametri...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
A Work Project, presented as part of the requirements for the Award of a Masters Degree in Finance f...
We introduce a newly developed quantilefunction model that can be used for estimating conditionaldis...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
The central theme of the entire thesis is to explore new ways of modelling the time-varying conditio...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
This paper investigates a nonparametric approach for estimating conditional quantiles of time serie...
Value at risk models are concerned with the estimation of conditional quantiles of a time series. Fo...
We study alternative dynamics for Value at Risk (VaR) that incorporate a slow moving component and i...
The estimation of conditional quantiles has become an increasingly important issue in insurance and ...
Value at Risk (VaR) has become the standard measure of market risk employed by financial institution...
This paper investigates how the conditional quantiles of future returns and volatility of financial ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...