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#' Shiny App to Demonstrate One-Sample Z-Test
#'
#' @name shiny_onesampz
#' @aliases shiny_onesampz
#' @description An interactive Shiny app to demonstrate one-sample Z-test.
#' @usage shiny_onesampz()
#'
#' @details The interactive Shiny app demonstrates the principles of the hypothesis testing of means
#' in a one-sample design where the population variance is known.
#' The true population parameters are provided by the user.
#' The user changes the hypothesised population mean and other features and explores
#' how the Z-test compares the hypothesised mean
#' with the mean of the sample randomly drawn from the population.
#'
#' The left panel includes the user inputs for \strong{Simulation Features}, \strong{Population Parameters},
#' \strong{Sample Characteristics}, and \strong{Distribution Function}.
#' To use the app at first instance, just click the \code{Update} button.
#' To alter the input values, edit the text box or move the point on the slider and
#' explore the changes in different tabs (see below).
#'
#' To obtain identical outcomes in a separate run of the app,
#' set a common seed value at the bottom of the left panel and click \code{Update}.
#' All subsequent updates will produce identical results provided other inputs are identical.
#' The seed value is ignored when the option \code{check the box to update instantly} is selected.
#'
#' @return The outcomes are presented in several tabs.
#' \item{Population}{contains the density plots of the population and
#' rug plots of the sample units randomly drawn from the population.
#' It also includes the population parameter values chosen by the user.}
#' \item{Sample}{contains the dot plot and box plot of the sample drawn
#' randomly from the population and rug plot of the sample units.
#' It also includes the mean and standard deviation of the random sample.}
#' \item{Test Statistic}{contains the plot showing the mean difference
#' between the sample mean and hypothesised mean and corresponding 95\% confidence intervals (CI).
#' The tab also contains the distribution of the test statistic \code{t}
#' with the observed value of the test statistic and probabilities under the given value of the Type 1 error}
#' \item{Summary}{includes the summary of the sampled data and outcomes
#' from the one-sample Z-test. Different sections are:
#' (1) Hypothesis, highlighting the null and alternative hypothesis;
#' (2) Sample, tabulating the full sampled data;
#' (3) Summary Statistics, summarising the summary information of the sample;
#' (4) Test Statistic, presenting the outputs from the one-sample Z-test.
#' (5) Confidence Interval, highlighting the mean difference and corresponding 95\% confidence intervals (CI).}
#'
#' @note \url{https://shiny.abdn.ac.uk/Stats/apps/}
#'
#' @author Mintu Nath
#' @seealso Function in base R for normal distribution including
#' \code{\link{dnorm}}, \code{\link{pnorm}}, \code{\link{qnorm}}, \code{\link{rnorm}}.
#' The app \code{\link{shiny_onesampt}} performs the hypothesis testing of mean
#' when the population variance is known.
#'
#' @examples
#' if(interactive()){
#' library(ggplot2)
#' library(shiny)
#' library(ABACUS)
#' # Run shiny app
#' shiny_onesampz()
#' }
#'
#' @import shiny
#' @import ggplot2
#' @export
# Function
shiny_onesampz <- function() {
shiny::runApp(appDir = system.file("app_onesampz", package = "ABACUS"), launch.browser = TRUE)
Sys.setenv("shiny_onesampz" = "")
}
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