We propose a multivariate model of returns that accounts for four of the stylised facts of financial data: heavy tails, skew, volatility clustering, and asymmetric dependence with the aim of improving the accuracy of risk estimates and increasing out-of-sample utility of investors’ portfolios. We accommodate volatility clustering, the generalized Pareto distribution to capture heavy tails and skew, and the skewed-t copula to provide for asymmetric dependence. The proposed approach produces more accurate VaR estimates than seven competing approaches across eight data sets encompassing five asset classes. We show that this produces portfolios with higher utility, and lower downside risk than alternative approaches including mean-variance. We ...
We study whether investors can exploit serial dependence in stock returns to improve out-of-sample p...
The asymmetry in the tail dependence between U.S. equity portfolios and the aggregate U.S. market is...
Value-at-Risk (VaR) is one of the most important tools used in modern financial risk management. The...
The traditional Markowitz mean-variance portfolio optimization theory uses volatility as the sole me...
Value-at-Risk (VaR) is a widely used statistical measure in financial risk management for quantifyin...
Value at Risk (VaR) is the most widely used downside risk measure in finance. The contribution to th...
The problem of modeling asset returns is one of the most important issue in finance. People general...
This paper presents a new value at risk (VaR) estimation model for equity returns time series and te...
On estimating portfolio Value at Risk, the application of traditional univariate VaR models is limit...
Mean-Variance theory of portfolio construction is still regarded as the main building block of moder...
This thesis includes four essays on risk assessment with financial econometrics models. The first ch...
Why do mean–variance (MV) models perform so poorly? In searching for an answer to this question, we ...
Recent studies in the empirical finance literature have reported evidence of two types of asymmetrie...
Recent studies in the empirical finance literature have reported evidence of two types of asymmetrie...
[[abstract]]How to develop a method for measuring and managing the risk became an important issue. V...
We study whether investors can exploit serial dependence in stock returns to improve out-of-sample p...
The asymmetry in the tail dependence between U.S. equity portfolios and the aggregate U.S. market is...
Value-at-Risk (VaR) is one of the most important tools used in modern financial risk management. The...
The traditional Markowitz mean-variance portfolio optimization theory uses volatility as the sole me...
Value-at-Risk (VaR) is a widely used statistical measure in financial risk management for quantifyin...
Value at Risk (VaR) is the most widely used downside risk measure in finance. The contribution to th...
The problem of modeling asset returns is one of the most important issue in finance. People general...
This paper presents a new value at risk (VaR) estimation model for equity returns time series and te...
On estimating portfolio Value at Risk, the application of traditional univariate VaR models is limit...
Mean-Variance theory of portfolio construction is still regarded as the main building block of moder...
This thesis includes four essays on risk assessment with financial econometrics models. The first ch...
Why do mean–variance (MV) models perform so poorly? In searching for an answer to this question, we ...
Recent studies in the empirical finance literature have reported evidence of two types of asymmetrie...
Recent studies in the empirical finance literature have reported evidence of two types of asymmetrie...
[[abstract]]How to develop a method for measuring and managing the risk became an important issue. V...
We study whether investors can exploit serial dependence in stock returns to improve out-of-sample p...
The asymmetry in the tail dependence between U.S. equity portfolios and the aggregate U.S. market is...
Value-at-Risk (VaR) is one of the most important tools used in modern financial risk management. The...