Several market and macro-level variables influence the evolution of equity risk in addition to the well-known volatility persistence. However, the impact of those covariates might change depending on the risk level, being different between low and high volatility states. By combining equity risk estimates, obtained from the Realized Range Volatility, corrected for microstructure noise and jumps, and quantile regression methods, we evaluate the forecasting implications of the equity risk determinants in different volatility states and, without distributional assumptions on the realized range innovations, we recover both the points and the conditional distribution forecasts. In addition, we analyse how the the relationships among the involved...
This paper investigates the dynamics of sequential decision-making in agricultural futures and optio...
Published online: 17 October 2017We examine the nonlinear dependence structure and causal nexus betw...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
Several market and macro-level variables influence the evolution of equity risk in addition to the w...
This article applies quantile regression to assess the factors that influence the risk of incurring ...
In the wake of the recent financial crisis, a growing literature measures, and analyses the impact o...
This investigation is one of the first to adopt quantile regression (QR) technique to examine covari...
We evaluate the role of financial conditions as predictors of macroeconomic risk first in the quanti...
Conventional measures of risk in earnings based on historical standard deviation require long time s...
This paper employs weighted least squares to examine the risk-return relation by applying high-frequ...
In the recent years, quantile regression methods have attracted relevant interest in the statistical...
In this study we empirically explore the capacity of historical VaR to correctly predict the future ...
In this study we consider the risk estimation as a stochastic process based on the Sample Quantile P...
Most downside risk models implicitly assume that returns are a sufficient statistic with which to fo...
Information on economic policy uncertainty does matter in predicting the US equity premium, especial...
This paper investigates the dynamics of sequential decision-making in agricultural futures and optio...
Published online: 17 October 2017We examine the nonlinear dependence structure and causal nexus betw...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
Several market and macro-level variables influence the evolution of equity risk in addition to the w...
This article applies quantile regression to assess the factors that influence the risk of incurring ...
In the wake of the recent financial crisis, a growing literature measures, and analyses the impact o...
This investigation is one of the first to adopt quantile regression (QR) technique to examine covari...
We evaluate the role of financial conditions as predictors of macroeconomic risk first in the quanti...
Conventional measures of risk in earnings based on historical standard deviation require long time s...
This paper employs weighted least squares to examine the risk-return relation by applying high-frequ...
In the recent years, quantile regression methods have attracted relevant interest in the statistical...
In this study we empirically explore the capacity of historical VaR to correctly predict the future ...
In this study we consider the risk estimation as a stochastic process based on the Sample Quantile P...
Most downside risk models implicitly assume that returns are a sufficient statistic with which to fo...
Information on economic policy uncertainty does matter in predicting the US equity premium, especial...
This paper investigates the dynamics of sequential decision-making in agricultural futures and optio...
Published online: 17 October 2017We examine the nonlinear dependence structure and causal nexus betw...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...