RSSampling:Ranked Set Sampling
Ranked set sampling (RSS) is introduced as an advanced method for data collection which is substantial for the
statistical and methodological analysis in scientific studies
by McIntyre (1952) (reprinted in 2005)
<doi:10.1198/000313005X54180>. This package introduces the
first package that implements the RSS and its modified versions
for sampling. With 'RSSampling', the researchers can sample
with basic RSS and the modified versions, namely, Median RSS,
Extreme RSS, Percentile RSS, Balanced groups RSS, Double RSS,
L-RSS, Truncation-based RSS, Robust extreme RSS. The
'RSSampling' also allows imperfect ranking using an auxiliary
variable (concomitant) which is widely used in the real life
applications. Applicants can also use this package for
parametric and nonparametric inference such as mean, median and
variance estimation, regression analysis and some
distribution-free tests where the the samples are obtained via
basic RSS.