The aim of this paper is to provide conditions which ensure that the affinely transformed partial sums of a strictly stationary process converge in distribution to an infinite variance stable distribution. Conditions for this convergence to hold are known in the literature. However, most of these results are qualitative in the sense that the parameters of the limit distribution are expressed in terms of some limiting point process. In this paper we will be able to determine the parameters of the limiting stable distribution in terms of some tail characteristics of the underlying stationary sequence. We will apply our results to some standard time series models, including the GARCH(1, 1) process and its squares, the stochastic vola...
Non-Gaussian stable stochastic models have attracted growing interest in recent years, due to their ...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
Under an appropriate regular variation condition, the affinely normalized partial sums of a sequence...
For the partial sums (S,) of independent random variables we define a stochastic process s(n)(t) := ...
AbstractThe paper obtains a functional limit theorem for the empirical process of a stationary movin...
It has been observed that data often appears to be well approximated by infinite variance stable dis...
Non-Gaussian stable stochastic models have attracted growing interest in recent years, due to their ...
A necessary and sufficient condition for the weak convergence of partial sums of strongly mixing ran...
Let be a stationary sequence of random variables with partial sums Sn. Necessary and sufficient cond...
AbstractSeveral α-stable limit theorems for sums of dependent random vectors are proved via point pr...
Abstract. Let (Xi) be a sequence of i.i.d. random variables, and let N be a geometric random variabl...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
Non-Gaussian stable stochastic models have attracted growing interest in recent years, due to their ...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
Under an appropriate regular variation condition, the affinely normalized partial sums of a sequence...
For the partial sums (S,) of independent random variables we define a stochastic process s(n)(t) := ...
AbstractThe paper obtains a functional limit theorem for the empirical process of a stationary movin...
It has been observed that data often appears to be well approximated by infinite variance stable dis...
Non-Gaussian stable stochastic models have attracted growing interest in recent years, due to their ...
A necessary and sufficient condition for the weak convergence of partial sums of strongly mixing ran...
Let be a stationary sequence of random variables with partial sums Sn. Necessary and sufficient cond...
AbstractSeveral α-stable limit theorems for sums of dependent random vectors are proved via point pr...
Abstract. Let (Xi) be a sequence of i.i.d. random variables, and let N be a geometric random variabl...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
Non-Gaussian stable stochastic models have attracted growing interest in recent years, due to their ...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...
For the partial sums (Sn) of independent random variables we define a stochastic process sn(t)colon,...