Provides a simple and intuitive pipe-friendly framework, coherent with the ‘tidyverse’ design philosophy, for performing basic statistical tests, including t-test, Wilcoxon test, ANOVA, Kruskal-Wallis and correlation analyses.

The output of each test is automatically transformed into a tidy data frame to facilitate visualization.

Additional functions are available for reshaping, reordering, manipulating and visualizing correlation matrix. Functions are also included to facilitate the analysis of factorial experiments, including purely ‘within-Ss’ designs (repeated measures), purely ‘between-Ss’ designs, and mixed ‘within-and-between-Ss’ designs.

It’s also possible to compute several effect size metrics, including “eta squared” for ANOVA, “Cohen’s d” for t-test and “Cramer’s V” for the association between categorical variables. The package contains helper functions for identifying univariate and multivariate outliers, assessing normality and homogeneity of variances.

Key functions

Descriptive statistics

Comparing means

  • t_test(): perform one-sample, two-sample and pairwise t-tests
  • wilcox_test(): perform one-sample, two-sample and pairwise Wilcoxon tests
  • sign_test(): perform sign test to determine whether there is a median difference between paired or matched observations.
  • anova_test(): an easy-to-use wrapper around car::Anova() to perform different types of ANOVA tests, including independent measures ANOVA, repeated measures ANOVA and mixed ANOVA.
  • get_anova_test_table(): extract ANOVA table from anova_test() results. Can apply sphericity correction automatically in the case of within-subject (repeated measures) designs.
  • welch_anova_test(): Welch one-Way ANOVA test. A pipe-friendly wrapper around the base function stats::oneway.test(). This is is an alternative to the standard one-way ANOVA in the situation where the homogeneity of variance assumption is violated.
  • kruskal_test(): perform kruskal-wallis rank sum test
  • friedman_test(): Provides a pipe-friendly framework to perform a Friedman rank sum test, which is the non-parametric alternative to the one-way repeated measures ANOVA test.
  • get_comparisons(): Create a list of possible pairwise comparisons between groups.
  • get_pvalue_position(): autocompute p-value positions for plotting significance using ggplot2.

Facilitating ANOVA computation in R

  • factorial_design(): build factorial design for easily computing ANOVA using the car::Anova() function. This might be very useful for repeated measures ANOVA, which is hard to set up with the car package.
  • anova_summary(): Create beautiful summary tables of ANOVA test results obtained from either car::Anova() or stats::aov(). The results include ANOVA table, generalized effect size and some assumption checks, such as Mauchly’s test for sphericity in the case of repeated measures ANOVA.

Post-hoc analyses

  • tukey_hsd(): performs tukey post-hoc tests. Can handle different inputs formats: aov, lm, formula.
  • dunn_test(): compute multiple pairwise comparisons following Kruskal-Wallis test.
  • games_howell_test(): Performs Games-Howell test, which is used to compare all possible combinations of group differences when the assumption of homogeneity of variances is violated.
  • emmeans_test(): pipe-friendly wrapper arround emmeans function to perform pairwise comparisons of estimated marginal means. Useful for post-hoc analyses following up ANOVA/ANCOVA tests.

Comparing proportions

  • prop_test(), pairwise_prop_test() and row_wise_prop_test(). Performs one-sample and two-samples z-test of proportions. Wrappers around the R base function prop.test() but have the advantage of performing pairwise and row-wise z-test of two proportions, the post-hoc tests following a significant chi-square test of homogeneity for 2xc and rx2 contingency tables.
  • fisher_test(), pairwise_fisher_test() and row_wise_fisher_test(): Fisher’s exact test for count data. Wrappers around the R base function fisher.test() but have the advantage of performing pairwise and row-wise fisher tests, the post-hoc tests following a significant chi-square test of homogeneity for 2xc and rx2 contingency tables.
  • chisq_test(), pairwise_chisq_gof_test(), pairwise_chisq_test_against_p(): Performs chi-squared tests, including goodness-of-fit, homogeneity and independence tests.
  • binom_test(), pairwise_binom_test(), pairwise_binom_test_against_p(): Performs exact binomial test and pairwise comparisons following a significant exact multinomial test. Alternative to the chi-square test of goodness-of-fit-test when the sample.
  • multinom_test(): performs an exact multinomial test. Alternative to the chi-square test of goodness-of-fit-test when the sample size is small.
  • mcnemar_test(): performs McNemar chi-squared test to compare paired proportions. Provides pairwise comparisons between multiple groups.
  • cochran_qtest(): extension of the McNemar Chi-squared test for comparing more than two paired proportions.
  • prop_trend_test(): Performs chi-squared test for trend in proportion. This test is also known as Cochran-Armitage trend test.

Comparing variances

  • levene_test(): Pipe-friendly framework to easily compute Levene’s test for homogeneity of variance across groups. Handles grouped data.
  • box_m(): Box’s M-test for homogeneity of covariance matrices

Effect Size

Correlation analysis

Computing correlation:

  • cor_test(): correlation test between two or more variables using Pearson, Spearman or Kendall methods.
  • cor_mat(): compute correlation matrix with p-values. Returns a data frame containing the matrix of the correlation coefficients. The output has an attribute named “pvalue”, which contains the matrix of the correlation test p-values.
  • cor_get_pval(): extract a correlation matrix p-values from an object of class cor_mat().
  • cor_pmat(): compute the correlation matrix, but returns only the p-values of the correlation tests.
  • as_cor_mat(): convert a cor_test object into a correlation matrix format.

Reshaping correlation matrix:

  • cor_reorder(): reorder correlation matrix, according to the coefficients, using the hierarchical clustering method.
  • cor_gather(): takes a correlation matrix and collapses (or melt) it into long format data frame (paired list)
  • cor_spread(): spread a long correlation data frame into wide format (correlation matrix).

Subsetting correlation matrix:

Visualizing correlation matrix:

Adjusting p-values, formatting and adding significance symbols

  • adjust_pvalue(): add an adjusted p-values column to a data frame containing statistical test p-values
  • add_significance(): add a column containing the p-value significance level
  • p_round(), p_format(), p_mark_significant(): rounding and formatting p-values

Extract information from statistical tests

Extract information from statistical test results. Useful for labelling plots with test outputs.

Data manipulation helper functions

These functions are internally used in the rstatix and in the ggpubr R package to make it easy to program with tidyverse packages using non standard evaluation.

  • df_select(), df_arrange(), df_group_by(): wrappers arround dplyr functions for supporting standard and non standard evaluations.
  • df_nest_by(): Nest a tibble data frame using grouping specification. Supports standard and non standard evaluations.
  • df_split_by(): Split a data frame by groups into subsets or data panel. Very similar to the function df_nest_by(). The only difference is that, it adds labels to each data subset. Labels are the combination of the grouping variable levels.
  • df_unite(): Unite multiple columns into one.
  • df_unite_factors(): Unite factor columns. First, order factors levels then merge them into one column. The output column is a factor.
  • df_label_both(), df_label_value(): functions to label data frames rows by by one or multiple grouping variables.
  • df_get_var_names(): Returns user specified variable names. Supports standard and non standard evaluation.

Others

  • doo(): alternative to dplyr::do for doing anything. Technically it uses nest() + mutate() + map() to apply arbitrary computation to a grouped data frame.
  • sample_n_by(): sample n rows by group from a table
  • convert_as_factor(), set_ref_level(), reorder_levels(): Provides pipe-friendly functions to convert simultaneously multiple variables into a factor variable.
  • make_clean_names(): Pipe-friendly function to make syntactically valid column names (for input data frame) or names (for input vector).
  • counts_to_cases(): converts a contingency table or a data frame of counts into a data frame of individual observations.

Installation and loading

  • Install the latest developmental version from GitHub as follow:
if(!require(devtools)) install.packages("devtools")
devtools::install_github("kassambara/rstatix")
  • Or install from CRAN as follow:
install.packages("rstatix")
  • Loading packages
library(rstatix)  
library(ggpubr)  # For easy data-visualization

Descriptive statistics

# Summary statistics of some selected variables
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
iris %>% 
  get_summary_stats(Sepal.Length, Sepal.Width, type = "common")
#> # A tibble: 2 x 10
#>   variable         n   min   max median   iqr  mean    sd    se    ci
#>   <fct>        <dbl> <dbl> <dbl>  <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
#> 1 Sepal.Length   150   4.3   7.9    5.8   1.3  5.84 0.828 0.068 0.134
#> 2 Sepal.Width    150   2     4.4    3     0.5  3.06 0.436 0.036 0.07

# Whole data frame
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
iris %>% get_summary_stats(type = "common")
#> # A tibble: 4 x 10
#>   variable         n   min   max median   iqr  mean    sd    se    ci
#>   <fct>        <dbl> <dbl> <dbl>  <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
#> 1 Sepal.Length   150   4.3   7.9   5.8    1.3  5.84 0.828 0.068 0.134
#> 2 Sepal.Width    150   2     4.4   3      0.5  3.06 0.436 0.036 0.07 
#> 3 Petal.Length   150   1     6.9   4.35   3.5  3.76 1.76  0.144 0.285
#> 4 Petal.Width    150   0.1   2.5   1.3    1.5  1.20 0.762 0.062 0.123


# Grouped data
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
iris %>%
  group_by(Species) %>% 
  get_summary_stats(Sepal.Length, type = "mean_sd")
#> # A tibble: 3 x 5
#>   Species    variable         n  mean    sd
#>   <fct>      <fct>        <dbl> <dbl> <dbl>
#> 1 setosa     Sepal.Length    50  5.01 0.352
#> 2 versicolor Sepal.Length    50  5.94 0.516
#> 3 virginica  Sepal.Length    50  6.59 0.636

Comparing two means

To compare the means of two groups, you can use either the function t_test() (parametric) or wilcox_test() (non-parametric). In the following example the t-test will be illustrated.

Data

Preparing the demo data set:

df <- ToothGrowth
df$dose <- as.factor(df$dose)
head(df)
#>    len supp dose
#> 1  4.2   VC  0.5
#> 2 11.5   VC  0.5
#> 3  7.3   VC  0.5
#> 4  5.8   VC  0.5
#> 5  6.4   VC  0.5
#> 6 10.0   VC  0.5

One-sample test

The one-sample test is used to compare the mean of one sample to a known standard (or theoretical / hypothetical) mean (mu).

df %>% t_test(len ~ 1, mu = 0)
#> # A tibble: 1 x 7
#>   .y.   group1 group2         n statistic    df        p
#> * <chr> <chr>  <chr>      <int>     <dbl> <dbl>    <dbl>
#> 1 len   1      null model    60      19.1    59 6.94e-27
# One-sample test of each dose level
df %>% 
  group_by(dose) %>%
  t_test(len ~ 1, mu = 0)
#> # A tibble: 3 x 8
#>   dose  .y.   group1 group2         n statistic    df        p
#> * <fct> <chr> <chr>  <chr>      <int>     <dbl> <dbl>    <dbl>
#> 1 0.5   len   1      null model    20      10.5    19 2.24e- 9
#> 2 1     len   1      null model    20      20.0    19 3.22e-14
#> 3 2     len   1      null model    20      30.9    19 1.03e-17

Compare two independent groups

  • Create a simple box plot with p-values:
# T-test
stat.test <- df %>% 
  t_test(len ~ supp, paired = FALSE) 
stat.test
#> # A tibble: 1 x 8
#>   .y.   group1 group2    n1    n2 statistic    df      p
#> * <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>  <dbl>
#> 1 len   OJ     VC        30    30      1.92  55.3 0.0606

# Create a box plot
p <- ggboxplot(
  df, x = "supp", y = "len", 
  color = "supp", palette = "jco", ylim = c(0,40)
  )
# Add the p-value manually
p + stat_pvalue_manual(stat.test, label = "p", y.position = 35)

p +stat_pvalue_manual(stat.test, label = "T-test, p = {p}", 
                      y.position = 36)

  • Grouped data: compare supp levels after grouping the data by “dose”
# Statistical test
stat.test <- df %>%
  group_by(dose) %>%
  t_test(len ~ supp) %>%
  adjust_pvalue() %>%
  add_significance("p.adj")
stat.test
#> # A tibble: 3 x 11
#>   dose  .y.   group1 group2    n1    n2 statistic    df       p   p.adj
#>   <fct> <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>   <dbl>   <dbl>
#> 1 0.5   len   OJ     VC        10    10    3.17    15.0 0.00636 0.0127 
#> 2 1     len   OJ     VC        10    10    4.03    15.4 0.00104 0.00312
#> 3 2     len   OJ     VC        10    10   -0.0461  14.0 0.964   0.964  
#> # … with 1 more variable: p.adj.signif <chr>

# Visualization
ggboxplot(
  df, x = "supp", y = "len",
  color = "supp", palette = "jco", facet.by = "dose",
  ylim = c(0, 40)
  ) +
  stat_pvalue_manual(stat.test, label = "p.adj", y.position = 35)

Compare paired samples

# T-test
stat.test <- df %>% 
  t_test(len ~ supp, paired = TRUE) 
stat.test
#> # A tibble: 1 x 8
#>   .y.   group1 group2    n1    n2 statistic    df       p
#> * <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>   <dbl>
#> 1 len   OJ     VC        30    30      3.30    29 0.00255

# Box plot
p <- ggpaired(
  df, x = "supp", y = "len", color = "supp", palette = "jco", 
  line.color = "gray", line.size = 0.4, ylim = c(0, 40)
  )
p + stat_pvalue_manual(stat.test, label = "p", y.position = 36)

Multiple pairwise comparisons

  • Pairwise comparisons: if the grouping variable contains more than two categories, a pairwise comparison is automatically performed.
# Pairwise t-test
pairwise.test <- df %>% t_test(len ~ dose)
pairwise.test
#> # A tibble: 3 x 10
#>   .y.   group1 group2    n1    n2 statistic    df        p    p.adj p.adj.signif
#> * <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>    <dbl>    <dbl> <chr>       
#> 1 len   0.5    1         20    20     -6.48  38.0 1.27e- 7 2.54e- 7 ****        
#> 2 len   0.5    2         20    20    -11.8   36.9 4.40e-14 1.32e-13 ****        
#> 3 len   1      2         20    20     -4.90  37.1 1.91e- 5 1.91e- 5 ****
# Box plot
ggboxplot(df, x = "dose", y = "len")+
  stat_pvalue_manual(
    pairwise.test, label = "p.adj", 
    y.position = c(29, 35, 39)
    )

  • Multiple pairwise comparisons against reference group: each level is compared to the ref group
# Comparison against reference group
#::::::::::::::::::::::::::::::::::::::::
# T-test: each level is compared to the ref group
stat.test <- df %>% t_test(len ~ dose, ref.group = "0.5")
stat.test
#> # A tibble: 2 x 10
#>   .y.   group1 group2    n1    n2 statistic    df        p    p.adj p.adj.signif
#> * <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>    <dbl>    <dbl> <chr>       
#> 1 len   0.5    1         20    20     -6.48  38.0 1.27e- 7 1.27e- 7 ****        
#> 2 len   0.5    2         20    20    -11.8   36.9 4.40e-14 8.80e-14 ****
# Box plot
ggboxplot(df, x = "dose", y = "len", ylim = c(0, 40)) +
  stat_pvalue_manual(
    stat.test, label = "p.adj.signif", 
    y.position = c(29, 35)
    )

# Remove bracket
ggboxplot(df, x = "dose", y = "len", ylim = c(0, 40)) +
  stat_pvalue_manual(
    stat.test, label = "p.adj.signif", 
    y.position = c(29, 35),
    remove.bracket = TRUE
    )

  • Multiple pairwise comparisons against all (base-mean): Comparison of each group against base-mean.
# T-test
stat.test <- df %>% t_test(len ~ dose, ref.group = "all")
stat.test
#> # A tibble: 3 x 10
#>   .y.   group1 group2    n1    n2 statistic    df         p   p.adj p.adj.signif
#> * <chr> <chr>  <chr>  <int> <int>     <dbl> <dbl>     <dbl>   <dbl> <chr>       
#> 1 len   all    0.5       60    20     5.82   56.4   2.90e-7 8.70e-7 ****        
#> 2 len   all    1         60    20    -0.660  57.5   5.12e-1 5.12e-1 ns          
#> 3 len   all    2         60    20    -5.61   66.5   4.25e-7 8.70e-7 ****
# Box plot with horizontal mean line
ggboxplot(df, x = "dose", y = "len") +
  stat_pvalue_manual(
    stat.test, label = "p.adj.signif", 
    y.position = 35,
    remove.bracket = TRUE
    ) +
  geom_hline(yintercept = mean(df$len), linetype = 2)

ANOVA test

# One-way ANOVA test
#:::::::::::::::::::::::::::::::::::::::::
df %>% anova_test(len ~ dose)
#> ANOVA Table (type II tests)
#> 
#>   Effect DFn DFd      F        p p<.05   ges
#> 1   dose   2  57 67.416 9.53e-16     * 0.703

# Two-way ANOVA test
#:::::::::::::::::::::::::::::::::::::::::
df %>% anova_test(len ~ supp*dose)
#> ANOVA Table (type II tests)
#> 
#>      Effect DFn DFd      F        p p<.05   ges
#> 1      supp   1  54 15.572 2.31e-04     * 0.224
#> 2      dose   2  54 92.000 4.05e-18     * 0.773
#> 3 supp:dose   2  54  4.107 2.20e-02     * 0.132

# Two-way repeated measures ANOVA
#:::::::::::::::::::::::::::::::::::::::::
df$id <- rep(1:10, 6) # Add individuals id
# Use formula
# df %>% anova_test(len ~ supp*dose + Error(id/(supp*dose)))
# or use character vector
df %>% anova_test(dv = len, wid = id, within = c(supp, dose))
#> ANOVA Table (type III tests)
#> 
#> $ANOVA
#>      Effect DFn DFd       F        p p<.05   ges
#> 1      supp   1   9  34.866 2.28e-04     * 0.224
#> 2      dose   2  18 106.470 1.06e-10     * 0.773
#> 3 supp:dose   2  18   2.534 1.07e-01       0.132
#> 
#> $`Mauchly's Test for Sphericity`
#>      Effect     W     p p<.05
#> 1      dose 0.807 0.425      
#> 2 supp:dose 0.934 0.761      
#> 
#> $`Sphericity Corrections`
#>      Effect   GGe      DF[GG]    p[GG] p[GG]<.05   HFe      DF[HF]    p[HF]
#> 1      dose 0.838 1.68, 15.09 2.79e-09         * 1.008 2.02, 18.15 1.06e-10
#> 2 supp:dose 0.938 1.88, 16.88 1.12e-01           1.176 2.35, 21.17 1.07e-01
#>   p[HF]<.05
#> 1         *
#> 2

# Use model as arguments
#:::::::::::::::::::::::::::::::::::::::::
.my.model <- lm(yield ~ block + N*P*K, npk)
anova_test(.my.model)
#> ANOVA Table (type II tests)
#> 
#>   Effect DFn DFd      F     p p<.05   ges
#> 1  block   4  12  4.959 0.014     * 0.623
#> 2      N   1  12 12.259 0.004     * 0.505
#> 3      P   1  12  0.544 0.475       0.043
#> 4      K   1  12  6.166 0.029     * 0.339
#> 5    N:P   1  12  1.378 0.263       0.103
#> 6    N:K   1  12  2.146 0.169       0.152
#> 7    P:K   1  12  0.031 0.863       0.003
#> 8  N:P:K   0  12     NA    NA  <NA>    NA

Correlation tests

# Data preparation
mydata <- mtcars %>% 
  select(mpg, disp, hp, drat, wt, qsec)
head(mydata, 3)
#>                mpg disp  hp drat    wt  qsec
#> Mazda RX4     21.0  160 110 3.90 2.620 16.46
#> Mazda RX4 Wag 21.0  160 110 3.90 2.875 17.02
#> Datsun 710    22.8  108  93 3.85 2.320 18.61

# Correlation test between two variables
mydata %>% cor_test(wt, mpg, method = "pearson")
#> # A tibble: 1 x 8
#>   var1  var2    cor statistic        p conf.low conf.high method 
#>   <chr> <chr> <dbl>     <dbl>    <dbl>    <dbl>     <dbl> <chr>  
#> 1 wt    mpg   -0.87     -9.56 1.29e-10   -0.934    -0.744 Pearson

# Correlation of one variable against all
mydata %>% cor_test(mpg, method = "pearson")
#> # A tibble: 5 x 8
#>   var1  var2    cor statistic        p conf.low conf.high method 
#>   <chr> <chr> <dbl>     <dbl>    <dbl>    <dbl>     <dbl> <chr>  
#> 1 mpg   disp  -0.85     -8.75 9.38e-10  -0.923     -0.708 Pearson
#> 2 mpg   hp    -0.78     -6.74 1.79e- 7  -0.885     -0.586 Pearson
#> 3 mpg   drat   0.68      5.10 1.78e- 5   0.436      0.832 Pearson
#> 4 mpg   wt    -0.87     -9.56 1.29e-10  -0.934     -0.744 Pearson
#> 5 mpg   qsec   0.42      2.53 1.71e- 2   0.0820     0.670 Pearson

# Pairwise correlation test between all variables
mydata %>% cor_test(method = "pearson")
#> # A tibble: 36 x 8
#>    var1  var2    cor statistic        p conf.low conf.high method 
#>    <chr> <chr> <dbl>     <dbl>    <dbl>    <dbl>     <dbl> <chr>  
#>  1 mpg   mpg    1       Inf    0.         1          1     Pearson
#>  2 mpg   disp  -0.85     -8.75 9.38e-10  -0.923     -0.708 Pearson
#>  3 mpg   hp    -0.78     -6.74 1.79e- 7  -0.885     -0.586 Pearson
#>  4 mpg   drat   0.68      5.10 1.78e- 5   0.436      0.832 Pearson
#>  5 mpg   wt    -0.87     -9.56 1.29e-10  -0.934     -0.744 Pearson
#>  6 mpg   qsec   0.42      2.53 1.71e- 2   0.0820     0.670 Pearson
#>  7 disp  mpg   -0.85     -8.75 9.38e-10  -0.923     -0.708 Pearson
#>  8 disp  disp   1       Inf    0.         1          1     Pearson
#>  9 disp  hp     0.79      7.08 7.14e- 8   0.611      0.893 Pearson
#> 10 disp  drat  -0.71     -5.53 5.28e- 6  -0.849     -0.481 Pearson
#> # … with 26 more rows

Correlation matrix

# Compute correlation matrix
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
cor.mat <- mydata %>% cor_mat()
cor.mat
#> # A tibble: 6 x 7
#>   rowname   mpg  disp    hp   drat    wt   qsec
#> * <chr>   <dbl> <dbl> <dbl>  <dbl> <dbl>  <dbl>
#> 1 mpg      1    -0.85 -0.78  0.68  -0.87  0.42 
#> 2 disp    -0.85  1     0.79 -0.71   0.89 -0.43 
#> 3 hp      -0.78  0.79  1    -0.45   0.66 -0.71 
#> 4 drat     0.68 -0.71 -0.45  1     -0.71  0.091
#> 5 wt      -0.87  0.89  0.66 -0.71   1    -0.17 
#> 6 qsec     0.42 -0.43 -0.71  0.091 -0.17  1

# Show the significance levels
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
cor.mat %>% cor_get_pval()
#> # A tibble: 6 x 7
#>   rowname      mpg     disp           hp       drat        wt       qsec
#>   <chr>      <dbl>    <dbl>        <dbl>      <dbl>     <dbl>      <dbl>
#> 1 mpg     0.       9.38e-10 0.000000179  0.0000178  1.29e- 10 0.0171    
#> 2 disp    9.38e-10 0.       0.0000000714 0.00000528 1.22e- 11 0.0131    
#> 3 hp      1.79e- 7 7.14e- 8 0            0.00999    4.15e-  5 0.00000577
#> 4 drat    1.78e- 5 5.28e- 6 0.00999      0          4.78e-  6 0.62      
#> 5 wt      1.29e-10 1.22e-11 0.0000415    0.00000478 2.27e-236 0.339     
#> 6 qsec    1.71e- 2 1.31e- 2 0.00000577   0.62       3.39e-  1 0

# Replacing correlation coefficients by symbols
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
cor.mat %>%
  cor_as_symbols() %>%
  pull_lower_triangle()
#>   rowname mpg disp hp drat wt qsec
#> 1     mpg                         
#> 2    disp   *                     
#> 3      hp   *    *                
#> 4    drat   +    +  .             
#> 5      wt   *    *  +    +        
#> 6    qsec   .    .  +

# Mark significant correlations
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
cor.mat %>%
  cor_mark_significant()
#>   rowname       mpg      disp        hp      drat    wt qsec
#> 1     mpg                                                   
#> 2    disp -0.85****                                         
#> 3      hp -0.78****  0.79****                               
#> 4    drat  0.68**** -0.71****   -0.45**                     
#> 5      wt -0.87****  0.89****  0.66**** -0.71****           
#> 6    qsec     0.42*    -0.43* -0.71****     0.091 -0.17


# Draw correlogram using R base plot
#::::::::::::::::::::::::::::::::::::::::::::::::::::::::::
cor.mat %>%
  cor_reorder() %>%
  pull_lower_triangle() %>% 
  cor_plot()