--- title: "Analysis of Deviance" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Analysis of Deviance} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ``` # Classic One-Way ANOVA As an introduction, lets start with one way ANOVA. Here three random variables following a normal distribution with a common standard deviation are created. For this test, the null hypothesis is $$ H_{0}: \mu_0 = \mu_1 = \mu_2 $$ ```{r part1} library(LRTesteR) set.seed(123) x <- c( rnorm(n = 50, mean = 1, sd = 1), rnorm(n = 50, mean = 3, sd = 1), rnorm(n = 50, mean = 5, sd = 1) ) fctr <- c(rep(1, 50), rep(2, 50), rep(3, 50)) fctr <- factor(fctr, levels = c("1", "2", "3")) gaussian_mu_one_way(x = x, fctr = fctr, conf.level = 0.95) ``` # Nonparametric One-Way ANOVA One-way analysis without assuming the data is normally distributed. ```{r part2} empirical_mu_one_way(x = x, fctr = fctr, conf.level = 0.95) ``` # Cauchy Random Variables Here two random variables following a Cauchy distribution with a common location and different scales are created. For this test, the null hypothesis is $$ H_{0}: \gamma_0 = \gamma_1 $$ ```{r part3} set.seed(1) x <- c(rcauchy(n = 50, location = 2, scale = 1), rcauchy(n = 50, location = 2, scale = 3)) fctr <- c(rep(1, 50), rep(2, 50)) fctr <- factor(fctr, levels = c("1", "2")) cauchy_scale_one_way(x = x, fctr = fctr, conf.level = 0.95) ``` # Poisson Random Variables Here three poisson random variables with different lambdas are created. The null hypothesis is $$ H_{0}: \lambda_0 = \lambda_1 = \lambda_2 $$ ```{r part4} set.seed(1) x <- c(rpois(n = 50, lambda = 1), rpois(n = 50, lambda = 2), rpois(n = 50, lambda = 3)) fctr <- c(rep(1, 50), rep(2, 50), rep(3, 50)) fctr <- factor(fctr, levels = c("1", "2", "3")) poisson_lambda_one_way(x = x, fctr = fctr, conf.level = 0.95) ``` # Mathematical Details All one way tests have a null hypothesis the groups share a common value of the parameter. The alternative is at least one group's parameter is unequal to the others. If the test involves a nuisance parameter, it is assumed equal across groups for parametric tests. All functions apply the Bonferroni correction to the set of confidence intervals.