We establish higher-order nonasymptotic expansions for a difference between probability distributions of sums of i.i.d. random vectors in a Euclidean space. The derived bounds are uniform over two classes of sets: the set of all Euclidean balls and the set of all half-spaces. These results allow to account for an impact of higher-order moments or cumulants of the considered distributions; the obtained error terms depend on a sample size and a dimension explicitly. The new inequalities outperform accuracy of the normal approximation in existing Berry-Esseen inequalities under very general conditions. Under some symmetry assumptions on the probability distribution of random summands, the obtained results are optimal in terms of the ratio betw...
We prove Edgeworth expansions for degenerate von Mises statistics like the Beran, Watson, and Cramér...
AbstractIt is shown that—under appropriate regularity conditions—the conditional distribution of the...
AbstractThe validity of formal Edgeworth expansions for statistics which are functions of sample ave...
AbstractEdgeworth approximations for multivariate U-statistics hold up to the order o(n−12) under mo...
This paper deals with the Gaussian and bootstrap approximations to the distribution of the max stati...
AbstractWe consider short asymptotic expansions for the probability of a sum of i.i.d. random elemen...
Edgeworth expansion provides higher-order corrections to the normal approximation for a probability ...
We obtain non-uniform Berry-Esseen type estimates and Edgeworth expansions for several classes of we...
AbstractIn the classical theory of Edgeworth expansion for the sample mean, it is typically assumed ...
In this article, we study bounds on the uniform distance between the cumulative distribution functio...
In the classical theory of Edgeworth expansion for the sample mean, it is typically assumed that the...
Let {Yn}n≥ 1 be a sequence of i.i.d. m-dimensional random vectors, and let f1,....., fk be rea...
ABSTRACT: Some standard test statistics in multivariate analysis have a common na-ture, that is, the...
Edgeworth approximations for multivariate U-statistics hold up to the order o(n-1/2) under moment co...
AbstractIt is shown that the probability that a suitably standardized asymptotic maximum likelihood ...
We prove Edgeworth expansions for degenerate von Mises statistics like the Beran, Watson, and Cramér...
AbstractIt is shown that—under appropriate regularity conditions—the conditional distribution of the...
AbstractThe validity of formal Edgeworth expansions for statistics which are functions of sample ave...
AbstractEdgeworth approximations for multivariate U-statistics hold up to the order o(n−12) under mo...
This paper deals with the Gaussian and bootstrap approximations to the distribution of the max stati...
AbstractWe consider short asymptotic expansions for the probability of a sum of i.i.d. random elemen...
Edgeworth expansion provides higher-order corrections to the normal approximation for a probability ...
We obtain non-uniform Berry-Esseen type estimates and Edgeworth expansions for several classes of we...
AbstractIn the classical theory of Edgeworth expansion for the sample mean, it is typically assumed ...
In this article, we study bounds on the uniform distance between the cumulative distribution functio...
In the classical theory of Edgeworth expansion for the sample mean, it is typically assumed that the...
Let {Yn}n≥ 1 be a sequence of i.i.d. m-dimensional random vectors, and let f1,....., fk be rea...
ABSTRACT: Some standard test statistics in multivariate analysis have a common na-ture, that is, the...
Edgeworth approximations for multivariate U-statistics hold up to the order o(n-1/2) under moment co...
AbstractIt is shown that the probability that a suitably standardized asymptotic maximum likelihood ...
We prove Edgeworth expansions for degenerate von Mises statistics like the Beran, Watson, and Cramér...
AbstractIt is shown that—under appropriate regularity conditions—the conditional distribution of the...
AbstractThe validity of formal Edgeworth expansions for statistics which are functions of sample ave...