## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) library(statease) ## ----eval=FALSE--------------------------------------------------------------- # # Install from CRAN # install.packages("statease") # # # Load the package # library(statease) ## ----------------------------------------------------------------------------- set.seed(42) tutorial_data <- data.frame( student_id = 1:90, method = rep(c("Traditional", "Online", "Hybrid"), each = 30), gender = rep(c("Male", "Female"), times = 45), exam_score = c( round(rnorm(30, mean = 65, sd = 10)), round(rnorm(30, mean = 72, sd = 10)), round(rnorm(30, mean = 78, sd = 10)) ), pre_test = c( round(rnorm(30, mean = 55, sd = 10)), round(rnorm(30, mean = 58, sd = 10)), round(rnorm(30, mean = 57, sd = 10)) ), age = round(rnorm(90, mean = 22, sd = 3)), passed = rbinom(90, 1, prob = 0.7) ) head(tutorial_data) ## ----------------------------------------------------------------------------- result <- describe(tutorial_data$exam_score, var_name = "Exam Score") print(result) ## ----------------------------------------------------------------------------- result$mean result$sd result$skew_label ## ----------------------------------------------------------------------------- males <- tutorial_data$exam_score[tutorial_data$gender == "Male"] females <- tutorial_data$exam_score[tutorial_data$gender == "Female"] result <- ttest_interpret( males, females, var_name = "Exam Score by Gender" ) print(result) ## ----------------------------------------------------------------------------- result <- ttest_interpret( tutorial_data$exam_score, mu = 70, var_name = "Exam Score" ) print(result) ## ----------------------------------------------------------------------------- result <- ttest_interpret( tutorial_data$exam_score, tutorial_data$pre_test, paired = TRUE, var_name = "Score Improvement" ) print(result) ## ----------------------------------------------------------------------------- result <- anova_interpret( exam_score ~ method, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- anova2_interpret( exam_score ~ method * gender, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- manova_interpret( cbind(exam_score, pre_test) ~ method, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- tutorial_data$passed_label <- ifelse(tutorial_data$passed == 1, "Pass", "Fail") result <- chisq_interpret( tutorial_data$method, tutorial_data$passed_label ) print(result) ## ----------------------------------------------------------------------------- result <- cor_interpret( tutorial_data$pre_test, tutorial_data$exam_score, var1_name = "Pre-Test Score", var2_name = "Exam Score" ) print(result) ## ----------------------------------------------------------------------------- result <- cor_interpret( tutorial_data$pre_test, tutorial_data$exam_score, method = "spearman", var1_name = "Pre-Test Score", var2_name = "Exam Score" ) print(result) ## ----------------------------------------------------------------------------- result <- reg_interpret( exam_score ~ pre_test, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- mlr_interpret( exam_score ~ pre_test + age, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- logistic_interpret( passed ~ pre_test + age, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- mannwhitney_interpret( males, females, var_name = "Exam Score by Gender" ) print(result) ## ----------------------------------------------------------------------------- result <- wilcoxon_interpret( tutorial_data$exam_score, tutorial_data$pre_test, var_name = "Score Improvement" ) print(result) ## ----------------------------------------------------------------------------- result <- kruskal_interpret( exam_score ~ method, data = tutorial_data ) print(result) ## ----------------------------------------------------------------------------- result <- interpret_p( 0.03, context = "teaching method effect on exam scores" ) print(result) ## ----------------------------------------------------------------------------- # Descriptive statistics analyze(x = tutorial_data$exam_score, var_name = "Exam Score") ## ----------------------------------------------------------------------------- # Auto t-test analyze( x = males, y = females, var_name = "Exam Score by Gender" ) ## ----------------------------------------------------------------------------- # Auto ANOVA analyze(formula = exam_score ~ method, data = tutorial_data) ## ----------------------------------------------------------------------------- # Auto non-parametric analyze( formula = exam_score ~ method, data = tutorial_data, nonparam = TRUE ) ## ----------------------------------------------------------------------------- # Auto regression analyze(formula = exam_score ~ pre_test, data = tutorial_data) ## ----------------------------------------------------------------------------- # Auto MANOVA analyze( formula = cbind(exam_score, pre_test) ~ method, data = tutorial_data )