共查询到5条相似文献,搜索用时 15 毫秒
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This paper proposes a conditional technique for the estimation of VaR and expected shortfall measures based on the skewed
generalized t (SGT) distribution. The estimation of the conditional mean and conditional variance of returns is based on ten popular variations
of the GARCH model. The results indicate that the TS-GARCH and EGARCH models have the best overall performance. The remaining
GARCH specifications, except in a few cases, produce acceptable results. An unconditional SGT-VaR performs well on an in-sample
evaluation and fails the tests on an out-of-sample evaluation. The latter indicates the need to incorporate time-varying mean
and volatility estimates in the computation of VaR and expected shortfall measures. 相似文献
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If g and G are the pdf and the cdf of a distribution symmetric around 0 then the pdf 2g(u)G(λ
u) is said to define a skew distribution. In this paper, we provide a mathematical treatment of the skew distributions when
g and G are taken to come from one of Laplace, logistic, Student’s t, uniform, exponential power or the Bessel function distribution.
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To understand and predict chronological dependence in the second‐order moments of asset returns, this paper considers a multivariate hysteretic autoregressive (HAR) model with generalized autoregressive conditional heteroskedasticity (GARCH) specification and time‐varying correlations, by providing a new method to describe a nonlinear dynamic structure of the target time series. The hysteresis variable governs the nonlinear dynamics of the proposed model in which the regime switch can be delayed if the hysteresis variable lies in a hysteresis zone. The proposed setup combines three useful model components for modeling economic and financial data: (1) the multivariate HAR model, (2) the multivariate hysteretic volatility models, and (3) a dynamic conditional correlation structure. This research further incorporates an adapted multivariate Student t innovation based on a scale mixture normal presentation in the HAR model to tolerate for dependence and different shaped innovation components. This study carries out bivariate volatilities, Value at Risk, and marginal expected shortfall based on a Bayesian sampling scheme through adaptive Markov chain Monte Carlo (MCMC) methods, thus allowing to statistically estimate all unknown model parameters and forecasts simultaneously. Lastly, the proposed methods herein employ both simulated and real examples that help to jointly measure for industry downside tail risk. 相似文献
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Kengo Kato 《Annals of the Institute of Statistical Mathematics》2009,61(3):531-542
The prediction problem for a multivariate normal distribution is considered where both mean and variance are unknown. When
the Kullback–Leibler loss is used, the Bayesian predictive density based on the right invariant prior, which turns out to
be a density of a multivariate t-distribution, is the best invariant and minimax predictive density. In this paper, we introduce an improper shrinkage prior
and show that the Bayesian predictive density against the shrinkage prior improves upon the best invariant predictive density
when the dimension is greater than or equal to three. 相似文献