12th International Statistics Days Conference - ISDC2022, İzmir, Türkiye, 13 - 16 Ekim 2022, ss.59
Comparing two dependent groups is an essential research topic in applied statistics. When
doing this, the location measures of the marginal distributions are generally used to compare
before and after measurements derived from the same sample group. The location estimators,
especially the mean, are generally sensitive to outlying observations. So if the point of interest
is the tails of the marginal distributions, location measures might not provide deep insight,
and a more specific measurement might be needed. Quantiles are reference values intended
to reflect the typical observations of a given particular point of a distribution. There are three
main approaches for obtaining a quantile estimator: using a single order statistic, taking the
weighted average of two order statistics, and taking the weighted average of all order
statistics. A common problem for all quantile estimators is getting a reasonable accurate
standard error estimation and a hypothesis testing procedure for the corresponding
population parameter. The percentile bootstrap approach in hypothesis testing performs
reasonably well in simulations. In this study, the newly proposed NO quantile estimator, the
Harrell-Davis quantile estimator, the trimmed Harrell-Davis quantile estimator, and the
default quantile estimator in R function quantile() (type-7 quantile estimator) were used to
compare the different quantile values of the two dependent groups using the percentile
bootstrap method. The study aims to compare the performances of four different quantile
estimators in terms of saving Type I error for the 0.05 level. A simulation design was
conducted for varying correlations, quantile values, sample sizes, and targeted statistical
distributions. All computations were performed in R 4.2. It was found that the NO quantile
estimator gives better results than the other quantile estimators in most of the scenarios
covered.
Keywords: no quantile estimator, percentile bootstrap method, two dependent groups