To draw inference on serial extremal dependence within heavy-tailed Markov chains, Drees, Segers and Warchol [Extremes (2015) 18, 369-402] proposed nonparametric estimators of the spectral tail process. The methodology can be extended to the more general setting of a stationary, regularly varying time series. The large-sample distribution of the estimators is derived via empirical process theory for cluster functionals. The finite-sample performance of these estimators is evaluated via Monte Carlo simulations. Moreover, two different bootstrap schemes are employed which yield confidence intervals for the pre-asymptotic spectral tail process: the stationary bootstrap and the multiplier block bootstrap. The estimators are applied to stock pri...
AbstractExtreme values of a stationary, multivariate time series may exhibit dependence across coord...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
New notions of tail and non-tail dependence are used to characterize sep-arately extremal and non-ex...
To draw inference on serial extremal dependence within heavy-tailed Markov chains, Drees, Segers and...
There is an increasing interest to understand the interplay of extreme values over time and across c...
At high levels, the asymptotic distribution of a stationary, regularly varying Markov chain is conve...
Modeling the dependence between consecutive observations in a time series plays a crucial role in ri...
This dissertation has 4 chapters, in which we attempt to explore and analyze the structure of extrem...
Dependence between extreme values is predominantly measured by first assuming a parametric joint dis...
In this paper we analyze the asymptotic properties of the popular distribution tail index estimator ...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
The present paper proposes new tests for detecting structural breaks in the tail dependence of multi...
ABSTRACT We characterize joint tails and tail dependence for a class of stochastic volatility proces...
AbstractFor estimating a rare event via the multivariate extreme value theory, the so-called tail de...
Pareto processes are suitable to model stationary heavy-tailed data. Here, we consider the auto-regr...
AbstractExtreme values of a stationary, multivariate time series may exhibit dependence across coord...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
New notions of tail and non-tail dependence are used to characterize sep-arately extremal and non-ex...
To draw inference on serial extremal dependence within heavy-tailed Markov chains, Drees, Segers and...
There is an increasing interest to understand the interplay of extreme values over time and across c...
At high levels, the asymptotic distribution of a stationary, regularly varying Markov chain is conve...
Modeling the dependence between consecutive observations in a time series plays a crucial role in ri...
This dissertation has 4 chapters, in which we attempt to explore and analyze the structure of extrem...
Dependence between extreme values is predominantly measured by first assuming a parametric joint dis...
In this paper we analyze the asymptotic properties of the popular distribution tail index estimator ...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
The present paper proposes new tests for detecting structural breaks in the tail dependence of multi...
ABSTRACT We characterize joint tails and tail dependence for a class of stochastic volatility proces...
AbstractFor estimating a rare event via the multivariate extreme value theory, the so-called tail de...
Pareto processes are suitable to model stationary heavy-tailed data. Here, we consider the auto-regr...
AbstractExtreme values of a stationary, multivariate time series may exhibit dependence across coord...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
New notions of tail and non-tail dependence are used to characterize sep-arately extremal and non-ex...