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314302

Nonparametric Estimation for Quantile and Sparsity Functions via Trimmed L-moments

Article

Last updated: 28 Dec 2024

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Tags

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Abstract

Trimmed Linear moments (TL-moments) are natural generalization of L-moments that do not require the mean of the underlying distribution to exist. Therefore, they are defined for heavy tailed distributions where they do not involve some values at the extreme ends of the distribution. We introduce and study properties of a new class of approximations to population quantile and sparsity functions based on TL-moments by minimizing the weighted mean square error between the population quantile function and its TL-moments representation. Also, we study properties of the corresponding sample estimator of population quantile in terms of sample L-moments and Jacobi polynomial from some known distributions. Our estimators have a good approximation to population quantile for a broad class of probability distribution functions. An example is given that illustrates the benefits of the proposed method.  

DOI

10.21608/esju.2010.314302

Keywords

Estimation, Moments - Jacobi Polynomial - Order Statistics - Quantile Function

Volume

54

Article Issue

1

Related Issue

43100

Issue Date

2010-06-01

Publish Date

2010-06-01

Page Start

33

Page End

46

Print ISSN

0542-1748

Online ISSN

2786-0086

Link

https://esju.journals.ekb.eg/article_314302.html

Detail API

https://esju.journals.ekb.eg/service?article_code=314302

Order

3

Type

Original Article

Type Code

1,914

Publication Type

Journal

Publication Title

The Egyptian Statistical Journal

Publication Link

https://esju.journals.ekb.eg/

MainTitle

Nonparametric Estimation for Quantile and Sparsity Functions via Trimmed L-moments

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Type

Article

Created At

28 Dec 2024