When two random variables have a bivariate normal distribution, Stein's lemma (Stein, 1973, 1981), provides, under certain regularity conditions, an expression for the covariance of the first variable with a function of the second. An extension of the lemma due to Liu (1994) as well as to Stein himself establishes an analogous result for a vector of variables which has a multivariate normal distribution. The extension leads in turn to a generalization of Siegel's (1993) formula for the covariance of an arbitrary element of a multivariate normal vector with its minimum element. This article describes extensions to Stein's lemma for the case when the vector of random variables has a multivariate skew-normal distribution. The corollaries to th...
This paper provides an introductory overview of a portion of distribution theory which is currently ...
We propose probabilistic representations for inverse Stein operators (i.e. solutions to Stein equati...
This article deals with Stein characterizations of probability distributions. We provide a general f...
When two random variables have a bivariate normal distribution, Stein's lemma (Stein, 1973, 1981), p...
This paper generalizes Stein's Lemma recently obtained for elliptical class distributions to the gen...
AbstractFor the family of multivariate normal distribution functions, Stein's Lemma presents a usefu...
For the family of multivariate normal distribution functions, Stein's Lemma presents a useful tool f...
Inspired by the work of Adcock, Landsman, and Shushi (2019) which established the Stein’s lemma for ...
In this paper, we present a minimal formalism for Stein operators which leads to different probabili...
The paper extends earlier work on the so-called skew-normal distribution, a family of distributions ...
The paper extends earlier work on the so-called skew-normal distribution, a family of distributions ...
An introductory account of the skew-normal distribution in the univariate and in the multivariate ca...
We propose probabilistic representations for inverse Stein operators (i.e. solutions to Stein equati...
The so-called Stein problem is addressed in the estimation of a mean vector of a multivariate normal...
• In a landmark paper, Stein (1981) derived a beautiful and simple lemma about the standard normal d...
This paper provides an introductory overview of a portion of distribution theory which is currently ...
We propose probabilistic representations for inverse Stein operators (i.e. solutions to Stein equati...
This article deals with Stein characterizations of probability distributions. We provide a general f...
When two random variables have a bivariate normal distribution, Stein's lemma (Stein, 1973, 1981), p...
This paper generalizes Stein's Lemma recently obtained for elliptical class distributions to the gen...
AbstractFor the family of multivariate normal distribution functions, Stein's Lemma presents a usefu...
For the family of multivariate normal distribution functions, Stein's Lemma presents a useful tool f...
Inspired by the work of Adcock, Landsman, and Shushi (2019) which established the Stein’s lemma for ...
In this paper, we present a minimal formalism for Stein operators which leads to different probabili...
The paper extends earlier work on the so-called skew-normal distribution, a family of distributions ...
The paper extends earlier work on the so-called skew-normal distribution, a family of distributions ...
An introductory account of the skew-normal distribution in the univariate and in the multivariate ca...
We propose probabilistic representations for inverse Stein operators (i.e. solutions to Stein equati...
The so-called Stein problem is addressed in the estimation of a mean vector of a multivariate normal...
• In a landmark paper, Stein (1981) derived a beautiful and simple lemma about the standard normal d...
This paper provides an introductory overview of a portion of distribution theory which is currently ...
We propose probabilistic representations for inverse Stein operators (i.e. solutions to Stein equati...
This article deals with Stein characterizations of probability distributions. We provide a general f...