The automatedtests package automatically selects and
runs the most appropriate statistical test for your data — no manual
decision-making needed. The function works with both individual vectors
or a data frame and provides the results in an easy-to-understand
format, which includes the test used and all the relevant
statistics.
| number | test |
|---|---|
| 1 | One-proportion test |
| 2 | Chi-square goodness-of-fit test |
| 3 | One-sample Student’s t-test |
| 4 | One-sample Wilcoxon test |
| 5 | Multiple linear regression |
| 6 | Binary logistic regression |
| 7 | Multinomial logistic regression |
| 8 | Pearson correlation |
| 9 | Spearman’s rank correlation |
| 10 | Cochran’s Q test |
| 11 | McNemar’s test |
| 12 | Fisher’s exact test |
| 13 | Chi-square test of independence |
| 14 | Student’s t-test for independent samples |
| 15 | Welch’s t-test for independent samples |
| 16 | Mann-Whitney U test |
| 17 | Student’s |
automatical_test()The automatical_test() function can be used with both
individual vectors or a data frame. It automatically selects the most
suitable statistical test based on the data provided.
In this example, we will use two vectors: Species and
Sepal.Length from the iris dataset. We will
use the automatical_test() function to automatically choose
the best statistical test for these vectors.
# Load the package
library(automatedtests)
# Example 1: Using individual vectors from the iris dataset
test1 <- automatical_test(iris$Species, iris$Sepal.Length, identifiers = FALSE)
# View the result summary
print(test1$getResult())##
## Kruskal-Wallis rank sum test
##
## data: data[[quan_index]] by data[[qual_index]]
## Kruskal-Wallis chi-squared = 96.937, df = 2, p-value < 2.2e-16
In this case, the function automatically selects the best statistical test based on the data’s distribution and other characteristics.
Here, we simulate a before-and-after scenario, where data is
collected before and after an intervention. The
automatical_test() function can be instructed to use paired
tests by setting the paired argument to
TRUE.
# Example 2: Forcing a paired test
before <- c(200, 220, 215, 205, 210)
after <- c(202, 225, 220, 210, 215)
paired_data <- data.frame(before, after)
# Perform the paired test
test2 <- automatical_test(before, after, paired = TRUE)
# View the result summary
print(test2$getResult())##
## Paired t-test
##
## data: data[[1]] and data[[2]]
## t = -7.3333, df = 4, p-value = 0.001841
## alternative hypothesis: true mean difference is not equal to 0
## 95 percent confidence interval:
## -6.065867 -2.734133
## sample estimates:
## mean difference
## -4.4
By setting paired = TRUE, the function forces the use of
a paired statistical test, even if identifiers are not provided.
You can override the default compare_to value to perform
one-sample tests. For example, you can test whether the data differs
significantly from a specified value.
# Example 3: One-sample test
test3 <- automatical_test(iris$Sepal.Length, compare_to = 5)
# View the result summary
print(test3$getResult()$p.value)## [1] 1.297119e-19
In this case, compare_to = 5 specifies that we are
performing a one-sample test where we compare the
Sepal.Length to the value 5.
The automatical_test() function simplifies the process
of selecting and running statistical tests. It automatically picks the
most appropriate test based on the data’s structure and characteristics.
You can fine-tune its behavior with options like
compare_to, identifiers, and
paired.
For more detailed information on the results of each test, you can
use the getResult() method to retrieve a summary of the
test performed.
AutomatedTest class for the object returned by the
automatical_test() function.automatedtests package documentation.