In finance, obtaining a precise estimation of the risk measures of the investment portfolio is
crucial for achieving good performance.
This thesis compares three methods for estimating the value at risk (VaR) and expected
shortfall (ES), the most important risk measures in portfolio analysis. Two of the methods
capture cross-sectional and serial dependence, while the third one uses the first four moments of
the portfolio assets and ignores serial and cross-sectional dependencies. The first model uses an
ARMA-GARCH vine copula model utilizing the software developed by Sommer (2022). In the
first step it models the serial dependence with ARMA-GARCH models for each asset, separately.
In a second step R-vine copulas are used to quantify cross-sectional dependence. The second
method uses S-vine copulas proposed by Nagler et al. (2022) for modelling both dependencies at
the same time based on translation invariance. For the last method Fleishman’s transformation
introduced in Fleishman (1978) is used for estimating the risk measures. For all the methods,
the estimation of risk measures is performed using Monte Carlo on the portfolio’s log returns.
To conduct a time varying analysis, it is applied within a rolling window. The research includes
several evaluation measures and backtests to compare the methods.
A case study is conducted representing the BVK portfolio, composed of private equity, equity,
fixed income, real estate and hedge fund indices. Two markets with 15 and 7 assets each, and
three portfolios (equal weighted, market capitalization, and BVK) are considered in the study
over a time period of 2005 to 2022. This comprehensive analysis helps us discover the strengths
and weaknesses of each method.
«
In finance, obtaining a precise estimation of the risk measures of the investment portfolio is
crucial for achieving good performance.
This thesis compares three methods for estimating the value at risk (VaR) and expected
shortfall (ES), the most important risk measures in portfolio analysis. Two of the methods
capture cross-sectional and serial dependence, while the third one uses the first four moments of
the portfolio assets and ignores serial and cross-sectional dependencies. The first...
»