AbstractHow much information does a small number of moments carry about the unknown distribution function? Is it possible to explicitly obtain from these moments some useful information, e.g., about the support, the modality, the general shape, or the tails of a distribution, without going into a detailed numerical solution of the moment problem? In this, previous and subsequent papers, clear and easy to implement answers will be given to some questions of this type. First, the question of how to distinguish between the main-mass interval and the tail regions, in the case we know only a number of moments of the target distribution function, will be addressed. The answer to this question is based on a version of the Chebyshev–Stieltjes–Marko...
Various methods have been proposed to approximate a solution to the truncated Hausdorff moment probl...
AbstractWhen limited information on the distribution of a positive random variable X (continuous or ...
In recent papers, Johnson and Kotz (Amer. Statist. 44, 245-249 (1990); Math. Sci. 15, 42-52 (1990)) ...
In this paper, we describe a tool to aid in proving theorems about random variables, called the mome...
This thesis comprises various results that rely on the moments of a distribution or the sample momen...
AbstractIn this work the problem of the approximate numerical determination of a semi-infinite suppo...
Let x be a transformation of y, whose distribution is unknown. We derive an expansion formulating th...
Reconstructing parton distribution function (PDF) from the corresponding Mellin moments belongs to a...
With recent advances in approximate inference, Bayesian methods have proven successful in larger dat...
21 pagesThe purpose of this paper is to study the problem of estimating a compactly supported densit...
A new method for solving the Hausdorff moment problem is presented which makes use of Pollaczek poly...
We give a complete description of almost all known results and present some new results and illustra...
Distribution function determination using moment generating function and probability density functio
AbstractIn recent papers, Johnson and Kotz (Amer. Statist.44, 245-249 (1990); Math. Sci.15, 42-52 (1...
We study the moment problem for finitely additive probabilities and show that the information provid...
Various methods have been proposed to approximate a solution to the truncated Hausdorff moment probl...
AbstractWhen limited information on the distribution of a positive random variable X (continuous or ...
In recent papers, Johnson and Kotz (Amer. Statist. 44, 245-249 (1990); Math. Sci. 15, 42-52 (1990)) ...
In this paper, we describe a tool to aid in proving theorems about random variables, called the mome...
This thesis comprises various results that rely on the moments of a distribution or the sample momen...
AbstractIn this work the problem of the approximate numerical determination of a semi-infinite suppo...
Let x be a transformation of y, whose distribution is unknown. We derive an expansion formulating th...
Reconstructing parton distribution function (PDF) from the corresponding Mellin moments belongs to a...
With recent advances in approximate inference, Bayesian methods have proven successful in larger dat...
21 pagesThe purpose of this paper is to study the problem of estimating a compactly supported densit...
A new method for solving the Hausdorff moment problem is presented which makes use of Pollaczek poly...
We give a complete description of almost all known results and present some new results and illustra...
Distribution function determination using moment generating function and probability density functio
AbstractIn recent papers, Johnson and Kotz (Amer. Statist.44, 245-249 (1990); Math. Sci.15, 42-52 (1...
We study the moment problem for finitely additive probabilities and show that the information provid...
Various methods have been proposed to approximate a solution to the truncated Hausdorff moment probl...
AbstractWhen limited information on the distribution of a positive random variable X (continuous or ...
In recent papers, Johnson and Kotz (Amer. Statist. 44, 245-249 (1990); Math. Sci. 15, 42-52 (1990)) ...