Control charts based on convolutions require study of the tail behavior of the empirical distribution function of convolutions. It is well-known that this empirical distribution function at a fixed argument $x$ is asymptotically normal. The asymptotic normality is extended here to sequences $x_{n}$ tending to infinity at a suitable rate. At still larger $x_{n}$'s Poisson limiting distributions come in for the classical empirical distribution function. Surprisingly, this property does not generalize to its convolution counterpart, since for those $x_{n}$'s it is degenerate at $0$ with probability tending to 1. Exact inequalities for the tail behavior are presented as well
International audienceCount data are omnipresent in many applied fields, often with overdispersion. ...
We consider the local empirical process indexed by sets, a substantial generalization of the well-st...
This paper addresses heavy-tailed large-deviation estimates for the distribution tail of functionals...
Control charts based on convolutions require study of the tail behavior of the empirical distributio...
Several classes of distribution functions are originated by considering distributions whose tailfunc...
It is shown that under mild assumptions, a convolution-smoothed empirical process exhibits essential...
We study the asymptotic behavior of empirical processes generated by measurable bounded functions...
In this paper, we discuss max-sum equivalence and convolution closure of heavy-tailed distributions....
International audienceGiven an observation of the uniform empirical process alpha(n) its functional ...
We study the asymptotic behavior of empirical processes generated by measurable bounded functions of...
ADInternational audienceOne often observed empirical regularity is a power-law behavior of the tails...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
AbstractIn proving limit theorems for some stochastic processes, the following classes of distributi...
International audienceCount data are omnipresent in many applied fields, often with overdispersion. ...
We consider the local empirical process indexed by sets, a substantial generalization of the well-st...
This paper addresses heavy-tailed large-deviation estimates for the distribution tail of functionals...
Control charts based on convolutions require study of the tail behavior of the empirical distributio...
Several classes of distribution functions are originated by considering distributions whose tailfunc...
It is shown that under mild assumptions, a convolution-smoothed empirical process exhibits essential...
We study the asymptotic behavior of empirical processes generated by measurable bounded functions...
In this paper, we discuss max-sum equivalence and convolution closure of heavy-tailed distributions....
International audienceGiven an observation of the uniform empirical process alpha(n) its functional ...
We study the asymptotic behavior of empirical processes generated by measurable bounded functions of...
ADInternational audienceOne often observed empirical regularity is a power-law behavior of the tails...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
AbstractIn proving limit theorems for some stochastic processes, the following classes of distributi...
International audienceCount data are omnipresent in many applied fields, often with overdispersion. ...
We consider the local empirical process indexed by sets, a substantial generalization of the well-st...
This paper addresses heavy-tailed large-deviation estimates for the distribution tail of functionals...