We suggest a procedure for estimating Nth degree polynomial approximations to unknown (or known) probability density functions (PDFs) based on N statistical moments from each distribution. The procedure is based on the method of moments and is setup algorithmically to aid applicability and to ensure rigor in use. In order to show applicability, polynomial PDF approximations are obtained for the distribution families Normal, Log-Normal, Weibull as well as for a bimodal Weibull distribution and a data set of anonymized household electricity use. The results are compared with results for traditional PDF series expansion methods of Gram-Charlier type. It is concluded that this procedure is a comparatively simple procedure that could be used whe...
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
• This paper provides an accessible methodology for approximating the distribution of a general line...
This thesis comprises various results that rely on the moments of a distribution or the sample momen...
We suggest a procedure for estimating Nth degree polynomial approximations to unknown (or known) pro...
We suggest a procedure for estimating Nth degree polynomial approximations to unknown (or known) pro...
Polynomials are common algebraic structures, which are often used to approximate functions, such as ...
Abstract. We investigate a problem connected with the evaluation of the asymp-totic probability dist...
Polynomials are common algebraic structures, which are often used to approximate functions including...
An approach to the problem of approximating a continuous probability distribution with a series in o...
This thesis deals with the problem of estimating statistical distributions from data. In the first p...
We provide a robust and general algorithm for computing distribution functions associated to induced...
We provide a robust and general algorithm for computing distribution functions associated to induced...
This paper considers a class of densities formed by taking the product of nonnegative polynomials an...
Abstract—The density estimates considered in this paper comprise a base density and an adjustment co...
In many practical applications, it turns out to be efficient to use Sliced-Normal multi-D distributi...
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
• This paper provides an accessible methodology for approximating the distribution of a general line...
This thesis comprises various results that rely on the moments of a distribution or the sample momen...
We suggest a procedure for estimating Nth degree polynomial approximations to unknown (or known) pro...
We suggest a procedure for estimating Nth degree polynomial approximations to unknown (or known) pro...
Polynomials are common algebraic structures, which are often used to approximate functions, such as ...
Abstract. We investigate a problem connected with the evaluation of the asymp-totic probability dist...
Polynomials are common algebraic structures, which are often used to approximate functions including...
An approach to the problem of approximating a continuous probability distribution with a series in o...
This thesis deals with the problem of estimating statistical distributions from data. In the first p...
We provide a robust and general algorithm for computing distribution functions associated to induced...
We provide a robust and general algorithm for computing distribution functions associated to induced...
This paper considers a class of densities formed by taking the product of nonnegative polynomials an...
Abstract—The density estimates considered in this paper comprise a base density and an adjustment co...
In many practical applications, it turns out to be efficient to use Sliced-Normal multi-D distributi...
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
• This paper provides an accessible methodology for approximating the distribution of a general line...
This thesis comprises various results that rely on the moments of a distribution or the sample momen...