2,135 research outputs found
Lower Tail Dependence for Archimedean Copulas: Characterizations and Pitfalls
Tail dependence copulas provide a natural perspective from which one can study the dependence in the tail of a multivariate distribution.For Archimedean copulas with continuously differentiable generators, regular variation of the generator near the origin is known to be closely connected to convergence of the corresponding lower tail dependence copulas to the Clayton copula.In this paper, these characterizations are refined and extended to the case of generators which are not necessarily continuously differentiable.Moreover, a counterexample is constructed showing that even if the generator of a strict Archimedean copula is continuously differentiable and slowly varying at the origin, then the lower tail dependence copulas do not need to converge to the independent copula.Archimedean copula;regular variation;tail dependence;de Haan class
Convergence of Archimedean Copulas
Convergence of a sequence of bivariate Archimedean copulas to another Archimedean copula or to the comonotone copula is shown to be equivalent with convergence of the corresponding sequence of Kendall distribution functions.No extra differentiability conditions on the generators are needed.Archimedean copula;generator;Kendall distribution function
Exponential Sums and Polynomial Congruences Along p-adic Submanifolds
In this article, we consider the estimation of exponential sums along the
points of the reduction mod of a -adic analytic submanifold of . More precisely, we extend Igusa's stationary phase method
to this type of exponential sums. We also study the number of solutions of a
polynomial congruence along the points of the reduction mod of a
-adic analytic submanifold of . In addition, we attach a
Poincare series to these numbers, and establish its rationality. In this way,
we obtain geometric bounds for the number of solutions of the corresponding
polynomial congruences.Comment: Several typos were corrected.To Appear in Finite Fields and its
Application
Projection Estimates of Constrained Functional Parameters
AMS classifications: 62G05; 62G07; 62G08; 62G20; 62G32;estimation;convex function;extreme value copula;Pickands dependence function;projection;shape constraint;support function;tangent cone
Edgeworth Expansions for the Distribution Function of the Hill Estimator
We establish Edgeworth expansions for the distribution function of the centered and normalized Hill estimator for the positive extreme value index.estimation;variation;statistical distribution
An M-Estimator for Tail Dependence in Arbitrary Dimensions
Consider a random sample in the max-domain of attraction of a multivariate extreme value distribution such that the dependence structure of the attractor belongs to a parametric model. A new estimator for the unknown parameter is defined as the value that minimises the distance between a vector of weighted integrals of the tail dependence function and their empirical counterparts. The minimisation problem has, with probability tending to one, a unique, global solution. The estimator is consistent and asymptotically normal. The spectral measures of the tail dependence models to which the method applies can be discrete or continuous. Examples demonstrate the applicability and the performance of the method.asymptotic statistics;factor model;M-estimation;multivariate extremes;tail dependence
Inference on the tail process with application to financial time series modelling
To draw inference on serial extremal dependence within heavy-tailed Markov
chains, Drees, Segers and Warcho{\l} [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 price data to
study the persistence of positive and negative shocks.Comment: 22 page
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