Stein's method is a powerful technique that can be used to obtain bounds for approximation errors in a weak convergence setting. The method has been used to obtain approximation results for a number of distributions, such as the normal, Poisson and Gamma distributions. A major strength of the method is that it is often relatively straightforward to apply it to problems involving dependent random variables. In this thesis, we consider the adaptation of Stein's method to the class of Variance-Gamma distributions. We obtain a Stein equation for the Variance-Gamma distributions. Uniform bounds for the solution of the Symmetric Variance-Gamma Stein equation and its first four derivatives are given in terms of the supremum norms of derivatives o...
peer reviewedUsing coupling techniques based on Stein’s method for probability approximation, we rev...
Stein operators are (differential/difference) operators which arise within the so-called Stein's met...
A sequence of random variables following the generalized inverse Gaussian or the Kummer distribution...
Stein's method is a powerful technique that can be used to obtain bounds for approximation errors in...
Variance-Gamma distributions are widely used in financial modeling and contain as special cases the ...
Variance-Gamma distributions are widely used in financial modeling and contain as special cases the ...
It is a well-known fact that if the random vector W converges in distribution to a multivariate norm...
New bounds for the (Formula presented.)th-order derivatives of the solutions of the normal and multi...
Using coupling techniques based on Stein's method for probability approximation, we revisit classica...
Stein's method is a powerful tool in estimating accuracy of various probability approximations. It w...
Using coupling techniques based on Stein's method for probability approximation, we revisit classica...
In this paper we extend Stein's method to the distribution of the product of n independent mean zero...
Stein’s method originated in 1972 in a paper in the Proceedings of the Sixth Berkeley Symposium. In ...
Stein operators are (differential/difference) operators which arise within the so-called Stein's met...
peer reviewedUsing coupling techniques based on Stein’s method for probability approximation, we rev...
peer reviewedUsing coupling techniques based on Stein’s method for probability approximation, we rev...
Stein operators are (differential/difference) operators which arise within the so-called Stein's met...
A sequence of random variables following the generalized inverse Gaussian or the Kummer distribution...
Stein's method is a powerful technique that can be used to obtain bounds for approximation errors in...
Variance-Gamma distributions are widely used in financial modeling and contain as special cases the ...
Variance-Gamma distributions are widely used in financial modeling and contain as special cases the ...
It is a well-known fact that if the random vector W converges in distribution to a multivariate norm...
New bounds for the (Formula presented.)th-order derivatives of the solutions of the normal and multi...
Using coupling techniques based on Stein's method for probability approximation, we revisit classica...
Stein's method is a powerful tool in estimating accuracy of various probability approximations. It w...
Using coupling techniques based on Stein's method for probability approximation, we revisit classica...
In this paper we extend Stein's method to the distribution of the product of n independent mean zero...
Stein’s method originated in 1972 in a paper in the Proceedings of the Sixth Berkeley Symposium. In ...
Stein operators are (differential/difference) operators which arise within the so-called Stein's met...
peer reviewedUsing coupling techniques based on Stein’s method for probability approximation, we rev...
peer reviewedUsing coupling techniques based on Stein’s method for probability approximation, we rev...
Stein operators are (differential/difference) operators which arise within the so-called Stein's met...
A sequence of random variables following the generalized inverse Gaussian or the Kummer distribution...