3 research outputs found
On extremal dependence : some contributions
The usual coefficients of tail dependence are based on exceedances of high
values. These extremal events are useful and widely used in literature but an adverse
situation may also occur with the upcrossing of a high level. In this context we define
upcrossings-tail dependence coefficients and analyze all types of dependence coming
out. We will prove that these coefficients are related to multivariate tail dependence
coefficients already known in literature. We shall see that the upcrossings-tail dependence
coefficients have the interesting feature of congregating both “temporal” and
“spatial” dependence.
The coefficients of tail dependence can also be applied to stationary sequences and
hence measure the tail dependence in time. Results concerning connections with the
extremal index and the upcrossings index as well as with local dependence conditions
will be stated. Several illustrative examples will be exploited and a small note on
inference will be given by presenting estimators derived from the stated results and
respective properties.Fundação para a Ciência e a Tecnologia (FCT
Extremes of multivariate ARMAX processes
We define a new multivariate time series model by generalizing the ARMAX
process in a multivariate way. We give conditions on stationarity and analyze
local dependence and domains of attraction. As a consequence of the obtained results,
we derive new multivariate extreme value distributions.We characterize the extremal
dependence by computing the multivariate extremal index and bivariate upper tail dependence
coefficients. An estimation procedure for the multivariate extremal index is
presented. We also address the marginal estimation and propose a new estimator for
the ARMAX autoregressive parameter.Fundação para a Ciência e a Tecnologia (FCT