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Main Authors: Prendergast, Luke A., Dedduwakumara, Shenal, Staudte, Robert G.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.11093
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author Prendergast, Luke A.
Dedduwakumara, Shenal
Staudte, Robert G.
author_facet Prendergast, Luke A.
Dedduwakumara, Shenal
Staudte, Robert G.
contents Sample quantiles, such as the median, are often better suited than the sample mean for summarising location characteristics of a data set. Similarly, linear combinations of sample quantiles and ratios of such linear combinations, e.g. the interquartile range and quantile-based skewness measures, are often used to quantify characteristics such as spread and skew. While often reported, it is uncommon to accompany quantile estimates with confidence intervals or standard errors. The rquest package provides a simple way to conduct hypothesis tests and derive confidence intervals for quantiles, linear combinations of quantiles, ratios of dependent linear combinations (e.g., Bowley's measure of skewness) and differences and ratios of all of the above for comparisons between independent samples. Many commonly used measures based on quantiles are included, although it is also very simple for users to define their own. Additionally, quantile-based measures of inequality are also considered. The methods are based on recent research showing that reliable distribution-free confidence intervals can be obtained, even for moderate sample sizes. Several examples are provided herein.
format Preprint
id arxiv_https___arxiv_org_abs_2410_11093
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle rquest: An R package for hypothesis tests and confidence intervals for quantiles and summary measures based on quantiles
Prendergast, Luke A.
Dedduwakumara, Shenal
Staudte, Robert G.
Methodology
Computation
62-04, 62G05
Sample quantiles, such as the median, are often better suited than the sample mean for summarising location characteristics of a data set. Similarly, linear combinations of sample quantiles and ratios of such linear combinations, e.g. the interquartile range and quantile-based skewness measures, are often used to quantify characteristics such as spread and skew. While often reported, it is uncommon to accompany quantile estimates with confidence intervals or standard errors. The rquest package provides a simple way to conduct hypothesis tests and derive confidence intervals for quantiles, linear combinations of quantiles, ratios of dependent linear combinations (e.g., Bowley's measure of skewness) and differences and ratios of all of the above for comparisons between independent samples. Many commonly used measures based on quantiles are included, although it is also very simple for users to define their own. Additionally, quantile-based measures of inequality are also considered. The methods are based on recent research showing that reliable distribution-free confidence intervals can be obtained, even for moderate sample sizes. Several examples are provided herein.
title rquest: An R package for hypothesis tests and confidence intervals for quantiles and summary measures based on quantiles
topic Methodology
Computation
62-04, 62G05
url https://arxiv.org/abs/2410.11093