745 lines
28 KiB
R
745 lines
28 KiB
R
# Mixed ANOVA Analysis for Domain Means
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# EOHI Experiment Data Analysis - Domain Level Analysis
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# Variables: NPast_mean_pref, NPast_mean_pers, NPast_mean_val, NPast_mean_life
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# NFut_mean_pref, NFut_mean_pers, NFut_mean_val, NFut_mean_life
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# Load required libraries
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library(tidyverse)
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library(ez)
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library(car)
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library(afex) # For aov_ez (cleaner ANOVA output)
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library(nortest) # For normality tests
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library(ggplot2) # For plotting
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library(emmeans) # For post-hoc comparisons
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library(purrr) # For map functions
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library(effsize) # For Cohen's d calculations
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library(effectsize) # For effect size calculations
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# Global options to remove scientific notation
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options(scipen = 999)
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# Set contrasts to sum for mixed ANOVA (necessary for proper interpretation)
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options(contrasts = c("contr.sum", "contr.poly"))
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setwd("C:/Users/irina/Documents/DND/EOHI/eohi1")
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# Read the data
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data <- read.csv("exp1.csv")
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# Display basic information about the dataset
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print(paste("Dataset dimensions:", paste(dim(data), collapse = " x")))
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print(paste("Number of participants:", length(unique(data$pID))))
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# Verify the specific variables we need
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required_vars <- c("NPast_mean_pref", "NPast_mean_pers", "NPast_mean_val", "NPast_mean_life",
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"NFut_mean_pref", "NFut_mean_pers", "NFut_mean_val", "NFut_mean_life")
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missing_vars <- required_vars[!required_vars %in% colnames(data)]
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if (length(missing_vars) > 0) {
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print(paste("Warning: Missing variables:", paste(missing_vars, collapse = ", ")))
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} else {
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print("All required domain mean variables found!")
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}
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# Define domain mapping
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domain_mapping <- data.frame(
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variable = c("NPast_mean_pref", "NPast_mean_pers", "NPast_mean_val", "NPast_mean_life",
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"NFut_mean_pref", "NFut_mean_pers", "NFut_mean_val", "NFut_mean_life"),
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time = c(rep("Past", 4), rep("Future", 4)),
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domain = rep(c("Preferences", "Personality", "Values", "Life"), 2),
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stringsAsFactors = FALSE
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)
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# Domain mapping created
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# Efficient data pivoting using pivot_longer
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long_data <- data %>%
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select(pID, ResponseId, TEMPORAL_DO, all_of(required_vars)) %>%
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pivot_longer(
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cols = all_of(required_vars),
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names_to = "variable",
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values_to = "MEAN_DIFFERENCE"
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) %>%
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left_join(domain_mapping, by = "variable") %>%
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select(pID, ResponseId, TEMPORAL_DO, TIME, DOMAIN, MEAN_DIFFERENCE) %>%
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# Convert to factors with proper levels
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mutate(
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TIME = factor(TIME, levels = c("Past", "Future")),
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DOMAIN = factor(DOMAIN, levels = c("Preferences", "Personality", "Values", "Life")),
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pID = as.factor(pID),
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TEMPORAL_DO = as.factor(TEMPORAL_DO)
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) %>%
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# Remove any rows with missing values
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filter(!is.na(MEAN_DIFFERENCE))
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print(paste("Long data dimensions:", paste(dim(long_data), collapse = " x")))
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print(paste("Number of participants:", length(unique(long_data$pID))))
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# =============================================================================
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# DESCRIPTIVE STATISTICS
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# =============================================================================
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# Overall descriptive statistics by TIME and DOMAIN
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desc_stats <- long_data %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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n = n(),
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mean = round(mean(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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variance = round(var(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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sd = round(sd(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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median = round(median(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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q1 = round(quantile(MEAN_DIFFERENCE, 0.25, na.rm = TRUE), 5),
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q3 = round(quantile(MEAN_DIFFERENCE, 0.75, na.rm = TRUE), 5),
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min = round(min(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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max = round(max(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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.groups = 'drop'
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)
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print("Descriptive statistics by TIME and DOMAIN:")
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print(desc_stats)
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# Descriptive statistics by between-subjects factors
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desc_stats_by_temporal <- long_data %>%
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group_by(TEMPORAL_DO, TIME, DOMAIN) %>%
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summarise(
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n = n(),
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mean = round(mean(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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variance = round(var(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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sd = round(sd(MEAN_DIFFERENCE, na.rm = TRUE), 5),
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.groups = 'drop'
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)
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print("Descriptive statistics by TEMPORAL_DO, TIME, and DOMAIN:")
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print(desc_stats_by_temporal)
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# =============================================================================
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# ASSUMPTION TESTING
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# =============================================================================
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# Remove missing values for assumption testing
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long_data_clean <- long_data[!is.na(long_data$MEAN_DIFFERENCE), ]
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print(paste("Data after removing missing values:", paste(dim(long_data_clean), collapse = " x")))
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# 1. Missing values check
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missing_summary <- long_data %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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n_total = n(),
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n_missing = sum(is.na(MEAN_DIFFERENCE)),
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pct_missing = round(100 * n_missing / n_total, 2),
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.groups = 'drop'
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)
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print("Missing values by TIME and DOMAIN:")
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print(missing_summary)
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# 2. Outlier detection
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outlier_summary <- long_data_clean %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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n = n(),
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mean = mean(MEAN_DIFFERENCE),
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sd = sd(MEAN_DIFFERENCE),
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q1 = quantile(MEAN_DIFFERENCE, 0.25),
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q3 = quantile(MEAN_DIFFERENCE, 0.75),
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iqr = q3 - q1,
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lower_bound = q1 - 1.5 * iqr,
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upper_bound = q3 + 1.5 * iqr,
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n_outliers = sum(MEAN_DIFFERENCE < lower_bound | MEAN_DIFFERENCE > upper_bound),
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.groups = 'drop'
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)
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print("Outlier summary (IQR method):")
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print(outlier_summary)
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# 3. Anderson-Darling normality test (streamlined)
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normality_results <- long_data_clean %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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n = n(),
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ad_statistic = ad.test(.data$MEAN_DIFFERENCE)$statistic,
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ad_p_value = ad.test(.data$MEAN_DIFFERENCE)$p.value,
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.groups = 'drop'
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)
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print("Anderson-Darling normality test results:")
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# Round only the numeric columns
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normality_results_rounded <- normality_results %>%
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mutate(across(where(is.numeric), ~ round(.x, 5)))
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print(normality_results_rounded)
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# 4. Homogeneity of variance (Levene's test)
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# Test homogeneity across TIME within each DOMAIN
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homogeneity_time <- long_data_clean %>%
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group_by(DOMAIN) %>%
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summarise(
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levene_F = leveneTest(MEAN_DIFFERENCE ~ TIME)$`F value`[1],
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levene_p = leveneTest(MEAN_DIFFERENCE ~ TIME)$`Pr(>F)`[1],
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.groups = 'drop'
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)
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print("Homogeneity of variance across TIME within each DOMAIN:")
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print(homogeneity_time)
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# Test homogeneity across DOMAIN within each TIME
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homogeneity_domain <- long_data_clean %>%
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group_by(TIME) %>%
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summarise(
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levene_F = leveneTest(MEAN_DIFFERENCE ~ DOMAIN)$`F value`[1],
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levene_p = leveneTest(MEAN_DIFFERENCE ~ DOMAIN)$`Pr(>F)`[1],
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.groups = 'drop'
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)
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print("Homogeneity of variance across DOMAIN within each TIME:")
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print(homogeneity_domain)
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# =============================================================================
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# HARTLEY'S F-MAX TEST WITH BOOTSTRAP CRITICAL VALUES
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# =============================================================================
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# Function to calculate Hartley's F-max ratio
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calculate_hartley_ratio <- function(variances) {
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max(variances, na.rm = TRUE) / min(variances, na.rm = TRUE)
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}
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# =============================================================================
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# CALCULATE OBSERVED F-MAX RATIOS FOR MIXED ANOVA
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# =============================================================================
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# For mixed ANOVA: Test homogeneity across BETWEEN-SUBJECTS factor (TEMPORAL_DO)
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# within each combination of within-subjects factors (TIME × DOMAIN)
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# First, let's check what values TEMPORAL_DO actually has
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print("=== CHECKING TEMPORAL_DO VALUES ===")
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print("Unique TEMPORAL_DO values:")
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print(unique(long_data_clean$TEMPORAL_DO))
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print("TEMPORAL_DO value counts:")
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print(table(long_data_clean$TEMPORAL_DO))
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print("\n=== OBSERVED F-MAX RATIOS: TEMPORAL_DO within each TIME × DOMAIN combination ===")
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observed_temporal_ratios <- long_data_clean %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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# Calculate variances for each TEMPORAL_DO level within this TIME × DOMAIN combination
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past_var = var(MEAN_DIFFERENCE[TEMPORAL_DO == "01PAST"], na.rm = TRUE),
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fut_var = var(MEAN_DIFFERENCE[TEMPORAL_DO == "02FUT"], na.rm = TRUE),
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# Calculate F-max ratio
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f_max_ratio = max(past_var, fut_var) / min(past_var, fut_var),
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.groups = 'drop'
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) %>%
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select(TIME, DOMAIN, past_var, fut_var, f_max_ratio)
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print(observed_temporal_ratios)
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# More efficient bootstrap function for Hartley's F-max test
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bootstrap_hartley_critical <- function(data, group_var, response_var, n_iter = 1000) {
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# Get unique groups and their sample sizes
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groups <- unique(data[[group_var]])
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# Calculate observed variances for each group
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observed_vars <- data %>%
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dplyr::group_by(!!sym(group_var)) %>%
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dplyr::summarise(var = var(!!sym(response_var), na.rm = TRUE), .groups = 'drop') %>%
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dplyr::pull(var)
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# Handle invalid variances
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if(any(observed_vars <= 0 | is.na(observed_vars))) {
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observed_vars[observed_vars <= 0 | is.na(observed_vars)] <- 1e-10
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}
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# Calculate observed F-max ratio
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observed_ratio <- max(observed_vars) / min(observed_vars)
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# Pre-allocate storage for bootstrap ratios
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bootstrap_ratios <- numeric(n_iter)
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# Get group data once
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group_data_list <- map(groups, ~ {
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group_data <- data[data[[group_var]] == .x, response_var]
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group_data[!is.na(group_data)]
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})
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# Bootstrap with pre-allocated storage
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for(i in 1:n_iter) {
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# Bootstrap sample from each group independently
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sample_vars <- map_dbl(group_data_list, ~ {
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bootstrap_sample <- sample(.x, size = length(.x), replace = TRUE)
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var(bootstrap_sample, na.rm = TRUE)
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})
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bootstrap_ratios[i] <- max(sample_vars) / min(sample_vars)
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}
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# Remove invalid ratios
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valid_ratios <- bootstrap_ratios[is.finite(bootstrap_ratios) & !is.na(bootstrap_ratios)]
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if(length(valid_ratios) == 0) {
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stop("No valid bootstrap ratios generated")
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}
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# Calculate critical value (95th percentile)
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critical_95 <- quantile(valid_ratios, 0.95, na.rm = TRUE)
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# Return only essential information
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return(list(
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observed_ratio = observed_ratio,
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critical_95 = critical_95,
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n_valid_iterations = length(valid_ratios)
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))
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}
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# Hartley's F-max test across TEMPORAL_DO within each TIME × DOMAIN combination
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print("\n=== HARTLEY'S F-MAX TEST RESULTS ===")
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set.seed(123) # For reproducibility
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hartley_temporal_results <- long_data_clean %>%
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group_by(TIME, DOMAIN) %>%
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summarise(
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hartley_result = list(bootstrap_hartley_critical(pick(TEMPORAL_DO, MEAN_DIFFERENCE), "TEMPORAL_DO", "MEAN_DIFFERENCE")),
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.groups = 'drop'
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) %>%
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mutate(
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observed_ratio = map_dbl(hartley_result, ~ .x$observed_ratio),
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critical_95 = map_dbl(hartley_result, ~ .x$critical_95),
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significant = observed_ratio > critical_95
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) %>%
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select(TIME, DOMAIN, observed_ratio, critical_95, significant)
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print(hartley_temporal_results)
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# =============================================================================
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# MIXED ANOVA ANALYSIS
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# =============================================================================
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# Check for missing data patterns
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table(long_data_clean$pID, long_data_clean$TIME, long_data_clean$DOMAIN, useNA = "ifany")
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# Check data balance
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xtabs(~ pID + TIME + DOMAIN, data = long_data_clean)
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# Check data dimensions and structure
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print(paste("Data size for ANOVA:", nrow(long_data_clean), "rows"))
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print(paste("Number of participants:", length(unique(long_data_clean$pID))))
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print(paste("Number of TIME levels:", length(levels(long_data_clean$TIME))))
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print(paste("Number of DOMAIN levels:", length(levels(long_data_clean$DOMAIN))))
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print(paste("Number of TEMPORAL_DO levels:", length(levels(long_data_clean$TEMPORAL_DO))))
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# Check for complete cases
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complete_cases <- long_data_clean[complete.cases(long_data_clean), ]
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print(paste("Complete cases:", nrow(complete_cases), "out of", nrow(long_data_clean)))
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# Check if design is balanced
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design_balance <- table(long_data_clean$pID, long_data_clean$TIME, long_data_clean$DOMAIN)
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print(summary(as.vector(design_balance)))
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# Check for any participants with missing combinations
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missing_combos <- long_data_clean %>%
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group_by(pID) %>%
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summarise(
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n_combinations = n(),
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expected_combinations = 8, # 2 TIME × 4 DOMAIN = 8
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missing_combinations = 8 - n_combinations,
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.groups = 'drop'
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)
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print("Missing combinations per participant:")
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print(missing_combos[missing_combos$missing_combinations > 0, ])
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# Mixed ANOVA using aov() - Traditional approach
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# Between-subjects: TEMPORAL_DO (2 levels: 01PAST, 02FUT)
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# Within-subjects: TIME (2 levels: Past, Future) × DOMAIN (4 levels: Preferences, Personality, Values, Life)
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mixed_anova_model <- aov(MEAN_DIFFERENCE ~ TEMPORAL_DO * TIME * DOMAIN + Error(pID/(TIME * DOMAIN)),
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data = long_data_clean)
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print("Mixed ANOVA Results (aov):")
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print(summary(mixed_anova_model))
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# Alternative: Using afex::aov_ez for cleaner output (optional)
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print("\n=== ALTERNATIVE: AFEX AOV_EZ RESULTS ===")
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mixed_anova_afex <- aov_ez(id = "pID",
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dv = "MEAN_DIFFERENCE",
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data = long_data_clean,
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between = "TEMPORAL_DO",
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within = c("TIME", "DOMAIN"))
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print("Mixed ANOVA Results (afex):")
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print(mixed_anova_afex)
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# =============================================================================
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# SPHERICITY TESTS FOR WITHIN-SUBJECTS FACTORS
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# =============================================================================
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# Sphericity tests using ezANOVA (library already loaded)
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print("\n=== SPHERICITY TESTS ===")
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# Test sphericity for DOMAIN (4 levels - within-subjects)
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print("Mauchly's Test of Sphericity for DOMAIN:")
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tryCatch({
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# Create a temporary data frame for ezANOVA
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temp_data <- long_data_clean
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temp_data$id <- as.numeric(as.factor(temp_data$pID))
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# Run ezANOVA to get sphericity tests
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ez_domain <- ezANOVA(data = temp_data,
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dv = MEAN_DIFFERENCE,
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wid = id,
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between = TEMPORAL_DO,
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within = DOMAIN,
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type = 3,
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detailed = TRUE)
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print("DOMAIN Sphericity Test:")
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print(ez_domain$Mauchly)
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}, error = function(e) {
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print(paste("Error in DOMAIN sphericity test:", e$message))
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})
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# Test sphericity for TIME (2 levels - within-subjects)
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print("\nMauchly's Test of Sphericity for TIME:")
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tryCatch({
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ez_time <- ezANOVA(data = temp_data,
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dv = MEAN_DIFFERENCE,
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wid = id,
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between = TEMPORAL_DO,
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within = TIME,
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type = 3,
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detailed = TRUE)
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print("TIME Sphericity Test:")
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print(ez_time$Mauchly)
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}, error = function(e) {
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print(paste("Error in TIME sphericity test:", e$message))
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})
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# Test sphericity for TIME × DOMAIN interaction
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print("\nMauchly's Test of Sphericity for TIME × DOMAIN Interaction:")
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tryCatch({
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ez_interaction <- ezANOVA(data = temp_data,
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dv = MEAN_DIFFERENCE,
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wid = id,
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between = TEMPORAL_DO,
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within = .(TIME, DOMAIN),
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type = 3,
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detailed = TRUE)
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print("TIME × DOMAIN Sphericity Test:")
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print(ez_interaction$Mauchly)
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}, error = function(e) {
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print(paste("Error in TIME × DOMAIN sphericity test:", e$message))
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})
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# =============================================================================
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# CORRECTED ANOVA RESULTS WITH SPHERICITY CORRECTIONS
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# =============================================================================
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print("\n=== CORRECTED ANOVA RESULTS (with sphericity corrections) ===")
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# Get corrected results from ezANOVA
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ez_corrected <- ezANOVA(data = long_data_clean,
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dv = MEAN_DIFFERENCE,
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wid = pID,
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between = TEMPORAL_DO,
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within = .(TIME, DOMAIN),
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type = 3,
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detailed = TRUE)
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print("Corrected ANOVA Results with Sphericity Corrections:")
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print(ez_corrected$ANOVA)
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# Show epsilon values for sphericity corrections
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print("\nEpsilon Values for Sphericity Corrections:")
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print(ez_corrected$Mauchly)
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# Show sphericity-corrected results
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print("\nSphericity-Corrected Results:")
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print("Available elements in ez_corrected object:")
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print(names(ez_corrected))
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# Check if sphericity corrections are available
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if(!is.null(ez_corrected$`Sphericity Corrections`)) {
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print("\nGreenhouse-Geisser and Huynh-Feldt Corrections:")
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print(ez_corrected$`Sphericity Corrections`)
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} else {
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print("\nNote: Sphericity corrections may not be displayed if sphericity is met")
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print("Check the Mauchly's test p-values above to determine if corrections are needed")
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}
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# =============================================================================
|
||
# ALTERNATIVE: SPHERICITY CORRECTIONS USING CAR PACKAGE
|
||
# =============================================================================
|
||
|
||
print("\n=== SPHERICITY CORRECTIONS USING CAR PACKAGE ===")
|
||
|
||
# Create a wide-format data for car package (library already loaded)
|
||
|
||
tryCatch({
|
||
# Convert to wide format for car package
|
||
wide_data <- long_data_clean %>%
|
||
select(pID, TEMPORAL_DO, TIME, DOMAIN, MEAN_DIFFERENCE) %>%
|
||
pivot_wider(names_from = c(TIME, DOMAIN),
|
||
values_from = MEAN_DIFFERENCE,
|
||
names_sep = "_")
|
||
|
||
# Create the repeated measures design
|
||
within_vars <- c("Past_Preferences", "Past_Personality", "Past_Values", "Past_Life",
|
||
"Future_Preferences", "Future_Personality", "Future_Values", "Future_Life")
|
||
|
||
# Check if all columns exist
|
||
missing_cols <- within_vars[!within_vars %in% colnames(wide_data)]
|
||
if(length(missing_cols) > 0) {
|
||
print(paste("Missing columns for car analysis:", paste(missing_cols, collapse = ", ")))
|
||
} else {
|
||
# Create the repeated measures design
|
||
rm_design <- as.matrix(wide_data[, within_vars])
|
||
|
||
# Calculate epsilon values
|
||
print("Epsilon Values from car package:")
|
||
epsilon_gg <- epsilon(rm_design, type = "Greenhouse-Geisser")
|
||
epsilon_hf <- epsilon(rm_design, type = "Huynh-Feldt")
|
||
|
||
print(paste("Greenhouse-Geisser epsilon:", round(epsilon_gg, 4)))
|
||
print(paste("Huynh-Feldt epsilon:", round(epsilon_hf, 4)))
|
||
|
||
# Interpretation
|
||
if(epsilon_gg < 0.75) {
|
||
print("Recommendation: Use Greenhouse-Geisser correction (epsilon < 0.75)")
|
||
} else if(epsilon_hf > 0.75) {
|
||
print("Recommendation: Use Huynh-Feldt correction (epsilon > 0.75)")
|
||
} else {
|
||
print("Recommendation: Use Greenhouse-Geisser correction (conservative)")
|
||
}
|
||
|
||
# =============================================================================
|
||
# MANUAL SPHERICITY CORRECTIONS
|
||
# =============================================================================
|
||
|
||
print("\n=== MANUAL SPHERICITY CORRECTIONS ===")
|
||
|
||
# Apply corrections to the original ANOVA results
|
||
print("Applying Greenhouse-Geisser corrections to DOMAIN effects:")
|
||
|
||
# DOMAIN main effect (DFn = 3, DFd = 3183)
|
||
domain_df_corrected_gg <- 3 * epsilon_gg
|
||
domain_df_corrected_hf <- 3 * epsilon_hf
|
||
|
||
print(paste("DOMAIN: Original df = 3, 3183"))
|
||
print(paste("DOMAIN: GG corrected df =", round(domain_df_corrected_gg, 2), ",", round(3183 * epsilon_gg, 2)))
|
||
print(paste("DOMAIN: HF corrected df =", round(domain_df_corrected_hf, 2), ",", round(3183 * epsilon_hf, 2)))
|
||
|
||
# TIME × DOMAIN interaction (DFn = 3, DFd = 3183)
|
||
interaction_df_corrected_gg <- 3 * epsilon_gg
|
||
interaction_df_corrected_hf <- 3 * epsilon_hf
|
||
|
||
print(paste("TIME × DOMAIN: Original df = 3, 3183"))
|
||
print(paste("TIME × DOMAIN: GG corrected df =", round(interaction_df_corrected_gg, 2), ",", round(3183 * epsilon_gg, 2)))
|
||
print(paste("TIME × DOMAIN: HF corrected df =", round(interaction_df_corrected_hf, 2), ",", round(3183 * epsilon_hf, 2)))
|
||
|
||
# Note: You would need to recalculate p-values with these corrected dfs
|
||
print("\nNote: To get corrected p-values, you would need to recalculate F-tests with corrected degrees of freedom")
|
||
print("The ezANOVA function should handle this automatically, but may not display the corrections")
|
||
}
|
||
|
||
}, error = function(e) {
|
||
print(paste("Error in manual epsilon calculation:", e$message))
|
||
})
|
||
|
||
# =============================================================================
|
||
# EFFECT SIZES (GENERALIZED ETA SQUARED)
|
||
# =============================================================================
|
||
|
||
# Effect size calculations (library already loaded)
|
||
|
||
print("\n=== EFFECT SIZES (GENERALIZED ETA SQUARED) ===")
|
||
|
||
# Calculate generalized eta squared for the aov model
|
||
print("Effect Sizes from aov() model:")
|
||
tryCatch({
|
||
# Extract effect sizes from aov model
|
||
aov_effects <- eta_squared(mixed_anova_model, partial = TRUE, generalized = TRUE)
|
||
print(round(aov_effects, 5))
|
||
}, error = function(e) {
|
||
print(paste("Error calculating effect sizes from aov:", e$message))
|
||
})
|
||
|
||
# Calculate effect sizes for ezANOVA model
|
||
print("\nEffect Sizes from ezANOVA model:")
|
||
tryCatch({
|
||
# ezANOVA provides partial eta squared, convert to generalized
|
||
ez_effects <- ez_corrected$ANOVA
|
||
ez_effects$ges <- ez_effects$ges # ezANOVA already provides generalized eta squared
|
||
print("Generalized Eta Squared from ezANOVA:")
|
||
print(round(ez_effects[, c("Effect", "ges")], 5))
|
||
}, error = function(e) {
|
||
print(paste("Error extracting effect sizes from ezANOVA:", e$message))
|
||
})
|
||
|
||
# Extract effect sizes (generalized eta squared)
|
||
# For aov() objects, we need to extract from the summary
|
||
anova_summary <- summary(mixed_anova_model)
|
||
|
||
# =============================================================================
|
||
# NOTE: MIXED MODELS (LMER) NOT NEEDED
|
||
# =============================================================================
|
||
|
||
# For this balanced repeated measures design, Type III ANOVA with proper
|
||
# sphericity corrections (implemented above) is the most appropriate approach.
|
||
# Mixed models (lmer) are typically used for:
|
||
# - Unbalanced designs
|
||
# - Missing data patterns
|
||
# - Nested random effects
|
||
# - Large, complex datasets
|
||
#
|
||
# Your design is balanced and complete, making Type III ANOVA optimal.
|
||
|
||
# =============================================================================
|
||
# POST-HOC COMPARISONS
|
||
# =============================================================================
|
||
|
||
# Post-hoc comparisons using emmeans
|
||
print("\n=== POST-HOC COMPARISONS ===")
|
||
|
||
# Main effect of TIME
|
||
print("Main Effect of TIME:")
|
||
time_emmeans <- emmeans(mixed_anova_model, ~ TIME)
|
||
time_contrasts <- pairs(time_emmeans, adjust = "bonferroni")
|
||
print(time_contrasts)
|
||
|
||
# Main effect of DOMAIN
|
||
print("\nMain Effect of DOMAIN:")
|
||
domain_emmeans <- emmeans(mixed_anova_model, ~ DOMAIN)
|
||
domain_contrasts <- pairs(domain_emmeans, adjust = "bonferroni")
|
||
print(domain_contrasts)
|
||
|
||
# Main effect of TEMPORAL_DO
|
||
print("\nMain Effect of TEMPORAL_DO:")
|
||
temporal_emmeans <- emmeans(mixed_anova_model, ~ TEMPORAL_DO)
|
||
temporal_contrasts <- pairs(temporal_emmeans, adjust = "bonferroni")
|
||
print(temporal_contrasts)
|
||
|
||
# =============================================================================
|
||
# INTERACTION EXPLORATIONS
|
||
# =============================================================================
|
||
|
||
# TEMPORAL_DO × TIME Interaction (Significant: p = 0.001)
|
||
print("\n=== TEMPORAL_DO × TIME INTERACTION ===")
|
||
temporal_time_emmeans <- emmeans(mixed_anova_model, ~ TEMPORAL_DO * TIME)
|
||
print("Estimated Marginal Means:")
|
||
print(temporal_time_emmeans)
|
||
|
||
print("\nSimple Effects of TIME within each TEMPORAL_DO:")
|
||
temporal_time_simple <- pairs(temporal_time_emmeans, by = "TEMPORAL_DO", adjust = "bonferroni")
|
||
print(temporal_time_simple)
|
||
|
||
print("\nSimple Effects of TEMPORAL_DO within each TIME:")
|
||
temporal_time_simple2 <- pairs(temporal_time_emmeans, by = "TIME", adjust = "bonferroni")
|
||
print(temporal_time_simple2)
|
||
|
||
# TIME × DOMAIN Interaction (Significant: p = 0.012)
|
||
print("\n=== TIME × DOMAIN INTERACTION ===")
|
||
time_domain_emmeans <- emmeans(mixed_anova_model, ~ TIME * DOMAIN)
|
||
print("Estimated Marginal Means:")
|
||
print(time_domain_emmeans)
|
||
|
||
print("\nSimple Effects of DOMAIN within each TIME:")
|
||
time_domain_simple <- pairs(time_domain_emmeans, by = "TIME", adjust = "bonferroni")
|
||
print(time_domain_simple)
|
||
|
||
print("\nSimple Effects of TIME within each DOMAIN:")
|
||
time_domain_simple2 <- pairs(time_domain_emmeans, by = "DOMAIN", adjust = "bonferroni")
|
||
print(time_domain_simple2)
|
||
|
||
# TEMPORAL_DO × DOMAIN Interaction (Marginal: p = 0.058)
|
||
print("\n=== TEMPORAL_DO × DOMAIN INTERACTION ===")
|
||
temporal_domain_emmeans <- emmeans(mixed_anova_model, ~ TEMPORAL_DO * DOMAIN)
|
||
print("Estimated Marginal Means:")
|
||
print(temporal_domain_emmeans)
|
||
|
||
print("\nSimple Effects of DOMAIN within each TEMPORAL_DO:")
|
||
temporal_domain_simple <- pairs(temporal_domain_emmeans, by = "TEMPORAL_DO", adjust = "bonferroni")
|
||
print(temporal_domain_simple)
|
||
|
||
print("\nSimple Effects of TEMPORAL_DO within each DOMAIN:")
|
||
temporal_domain_simple2 <- pairs(temporal_domain_emmeans, by = "DOMAIN", adjust = "bonferroni")
|
||
print(temporal_domain_simple2)
|
||
|
||
# =============================================================================
|
||
# COMPREHENSIVE THREE-WAY INTERACTION ANALYSIS
|
||
# =============================================================================
|
||
|
||
# All pairwise comparisons for the three-way interaction
|
||
print("\n=== COMPREHENSIVE THREE-WAY INTERACTION ANALYSIS ===")
|
||
three_way_emmeans <- emmeans(mixed_anova_model, ~ TEMPORAL_DO * TIME * DOMAIN)
|
||
print("Estimated Marginal Means for all combinations:")
|
||
print(three_way_emmeans)
|
||
|
||
# Pairwise comparisons within each TEMPORAL_DO × TIME combination
|
||
print("\nPairwise comparisons of DOMAIN within each TEMPORAL_DO × TIME combination:")
|
||
three_way_contrasts <- pairs(three_way_emmeans, by = c("TEMPORAL_DO", "TIME"), adjust = "bonferroni")
|
||
print(three_way_contrasts)
|
||
|
||
# =============================================================================
|
||
# COHEN'S D FOR SIGNIFICANT PAIRWISE COMPARISONS
|
||
# =============================================================================
|
||
|
||
# Cohen's d calculations (library already loaded)
|
||
|
||
print("\n=== COHEN'S D FOR SIGNIFICANT PAIRWISE COMPARISONS ===")
|
||
|
||
# Extract significant comparisons from three-way interaction
|
||
three_way_contrasts_df <- as.data.frame(three_way_contrasts)
|
||
significant_pairs <- three_way_contrasts_df[three_way_contrasts_df$p.value < 0.05, ]
|
||
|
||
if(nrow(significant_pairs) > 0) {
|
||
cat("Significant pairwise comparisons (p < 0.05):\n")
|
||
print(significant_pairs)
|
||
|
||
cat("\nCohen's d calculated from raw data:\n")
|
||
|
||
for(i in seq_len(nrow(significant_pairs))) {
|
||
comparison <- significant_pairs[i, ]
|
||
contrast_name <- as.character(comparison$contrast)
|
||
temporal_do <- as.character(comparison$TEMPORAL_DO)
|
||
time <- as.character(comparison$TIME)
|
||
|
||
# Parse the contrast
|
||
contrast_parts <- strsplit(contrast_name, " - ")[[1]]
|
||
if(length(contrast_parts) == 2) {
|
||
domain1 <- trimws(contrast_parts[1])
|
||
domain2 <- trimws(contrast_parts[2])
|
||
|
||
# Get raw data for both conditions
|
||
data1 <- long_data_clean$MEAN_DIFFERENCE[
|
||
long_data_clean$TEMPORAL_DO == temporal_do &
|
||
long_data_clean$TIME == time &
|
||
long_data_clean$DOMAIN == domain1]
|
||
|
||
data2 <- long_data_clean$MEAN_DIFFERENCE[
|
||
long_data_clean$TEMPORAL_DO == temporal_do &
|
||
long_data_clean$TIME == time &
|
||
long_data_clean$DOMAIN == domain2]
|
||
|
||
if(length(data1) > 0 && length(data2) > 0) {
|
||
# Calculate Cohen's d using effsize package
|
||
cohens_d_result <- cohen.d(data1, data2)
|
||
|
||
cat(sprintf("Comparison: %s | %s, %s\n", contrast_name, temporal_do, time))
|
||
cat(sprintf(" n1 = %d, n2 = %d\n", length(data1), length(data2)))
|
||
cat(sprintf(" Cohen's d: %.5f\n", cohens_d_result$estimate))
|
||
cat(sprintf(" Effect size interpretation: %s\n", cohens_d_result$magnitude))
|
||
cat(sprintf(" p-value: %.5f\n", comparison$p.value))
|
||
cat("\n")
|
||
}
|
||
}
|
||
}
|
||
} else {
|
||
cat("No significant pairwise comparisons found in three-way interaction.\n")
|
||
}
|
||
|