Extremal Memory of Stochastic Volatility with an Application to Tail Shape Inference1
نویسنده
چکیده
We characterize joint tails and tail dependence for a class of stochastic volatility processes. We derive the exact joint tail shape of multivariate stochastic volatility with innovations that have a regularly varying distribution tail. This is used to give four new characterizations of tail dependence. In three cases tail dependence is a non-trivial function of linear volatility memory parametrically represented by tail scales, while tail power indices do not provide any relevant dependence information. Although tail dependence is associated with linear volatility memory, tail dependence itself is nonlinear. In the fourth case a linear function of tail events and exceedances is linearly independent. Tail dependence falls in a class that implies the celebrated Hill (1975) tail index estimator is asymptotically normal, while linear independence of nonlinear tail arrays ensures the asymptotic variance is the same as the iid case. We illustrate the latter ̄nding by simulation.
منابع مشابه
Extremal memory of stochastic volatility with an application to tail shape inference
We characterize joint tails and tail dependence for a class of stochastic volatility processes. We derive the exact joint tail shape of multivariate stochastic volatility with innovations that have a regularly varying distribution tail. This is used to give four new characterizations of tail dependence. In three cases tail dependence is a non-trivial function of linear volatility memory paramet...
متن کاملGaussian Tests of Extremal White Noise for Dependent, Heterogeneous Processes with an Application
We develop a portmanteau test of extremal serial dependence. The test statistic is asymptotically chi-squared under a null of "extremal white noise", as long as extremes are Near-Epoch-Dependent, covering linear and nonlinear distributed lags, stochastic volatility, and GARCHprocesses with possib ly unit or explosive roots. We apply tail speci...c tests to equity market and exchange rate return...
متن کاملStochastic Volatility Models: Extremal Behavior
Stochastic volatility determines, as a rule, the extreme risk in price fluctuations. We review some of the most important stochastic volatility models concerning their extreme behaviour. This includes the tail behaviour as well as the cluster possibilities of such models. The following pattern is common for discretetime and continuous-time models. In linear models the volatility inherits the ta...
متن کاملApplication of Shape Memory Alloys in Seismic Isolation: A Review
In the last two decades, there has been an increasing interest in structural engineering control methods. Shape memory alloys and seismic isolation systems are examples of passive control systems that use of any one alone, effectively improve the seismic performance of the structure. Characteristics such as large strain range without any residual deformation, high damping capacity, excellent re...
متن کاملOn Tail Index Estimation for Dependent, Heterogeneous Data
In this paper we analyze the asymptotic properties of the popular distribution tail index estimator by Hill (1975) for dependent, heterogeneous processes. We develop new extremal dependence measures that characterize a massive array of linear, nonlinear, and conditional volatility processes with long or short memory. We prove that the Hill estimator is weakly and uniformly weakly consistent for...
متن کامل