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Wilcoxon Signed Rank Test in R Programming

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The Wilcoxon signed-rank test is a non-parametric statistical hypothesis test used to compare two related samples, matched samples, or repeated measurements on a single sample to estimate whether their population means ranks differ e.g. it is a paired difference test. It can be applied as an alternative to the paired Student’s t-test also known as “t-test for matched pairs” or “t-test for dependent samples” when the distribution of the difference between the two samples’ means cannot be assumed to be normally distributed. A Wilcoxon signed-rank test is a nonparametric test that can be used to determine whether two dependent samples were selected from populations having the same distribution.

Wilcoxon Signed-Rank Test in R

This test can be divided into two parts: 

  • One-Sample Wilcoxon Signed Rank Test
  • Paired Samples Wilcoxon Test

One-Sample Wilcoxon Signed Rank Test

The one-sample Wilcoxon signed-rank test is a non-parametric alternative to a one-sample t-test when the data cannot be assumed to be normally distributed. It’s used to determine whether the median of the sample is equal to a known standard value i.e. a theoretical value. In R Language one can perform this test very easily.

Implementation in R

To perform a one-sample Wilcoxon test, R provides a function wilcox.test() that can be used as follow:

Syntax: wilcox.test(x, mu = 0, alternative = “two.sided”)

Parameters: 

  • x: a numeric vector containing your data values
  • mu: the theoretical mean/median value. Default is 0 but you can change it.
  • alternative: the alternative hypothesis. Allowed value is one of “two.sided” (default), “greater” or “less”.

Example: Here, let’s use an example data set containing the weight of 10 rabbits. Let’s know if the median weight of the rabbit differs from 25g? 

R




# R program to illustrate
# one-sample Wilcoxon signed-rank test
 
# The data set
set.seed(1234)
myData = data.frame(
name = paste0(rep("R_", 10), 1:10),
weight = round(rnorm(10, 30, 2), 1)
)
 
# Print the data
print(myData)
 
# One-sample wilcoxon test
result = wilcox.test(myData$weight, mu = 25)
 
# Printing the results
print(result)


Output: 

    name weight
1   R_1   27.6
2   R_2   30.6
3   R_3   32.2
4   R_4   25.3
5   R_5   30.9
6   R_6   31.0
7   R_7   28.9
8   R_8   28.9
9   R_9   28.9
10 R_10   28.2

    Wilcoxon signed rank test with continuity correction

data:  myData$weight
V = 55, p-value = 0.005793
alternative hypothesis: true location is not equal to 25

In the above output, the p-value of the test is 0.005793, which is less than the significance level alpha = 0.05. So we can reject the null hypothesis and conclude that the average weight of the rabbit is significantly different from 25g with a p-value = 0.005793. 

If one wants to test whether the median weight of the rabbit is less than 25g (one-tailed test), then the code will be: 

R




# R program to illustrate
# one-sample Wilcoxon signed-rank test
 
# The data set
set.seed(1234)
myData = data.frame(
name = paste0(rep("R_", 10), 1:10),
weight = round(rnorm(10, 30, 2), 1)
)
 
# One-sample wilcoxon test
wilcox.test(myData$weight, mu = 25,
            alternative = "less")
 
# Printing the results
print(result)


Output: 

    Wilcoxon signed rank exact test

data:  myData$weight
V = 55, p-value = 1
alternative hypothesis: true location is less than 25

Or, If one wants to test whether the median weight of the rabbit is greater than 25g (one-tailed test), then the code will be: 

R




# R program to illustrate
# one-sample Wilcoxon sign-rank test
 
# The data set
set.seed(1234)
myData = data.frame(
name = paste0(rep("R_", 10), 1:10),
weight = round(rnorm(10, 30, 2), 1)
)
 
# One-sample wilcoxon test
wilcox.test(myData$weight, mu = 25,
            alternative = "greater")
 
# Printing the results
print(result)


Output: 

    Wilcoxon signed rank exact test

data:  myData$weight
V = 55, p-value = 1
alternative hypothesis: true location is less than 25

Paired Samples Wilcoxon Test in R

The paired samples Wilcoxon test is a non-parametric alternative to paired t-test used to compare paired data. It’s used when data are not normally distributed.

Implementation in R

To perform Paired Samples Wilcoxon-test, the R provides a function wilcox.test() that can be used as follow:

Syntax: wilcox.test(x, y, paired = TRUE, alternative = “two.sided”)

Parameters: 

  • x, y: numeric vectors
  • paired: a logical value specifying that we want to compute a paired Wilcoxon test
  • alternative: the alternative hypothesis. Allowed value is one of “two.sided” (default), “greater” or “less”.

Example: Here, let’s use an example data set, which contains the weight of 10 rabbits before and after the treatment. We want to know, if there is any significant difference in the median weights before and after treatment? 

R




# R program to illustrate
# Paired Samples Wilcoxon Test
 
# The data set
# Weight of the rabbit before treatment
before <-c(190.1, 190.9, 172.7, 213, 231.4,
        196.9, 172.2, 285.5, 225.2, 113.7)
 
# Weight of the rabbit after treatment
after <-c(392.9, 313.2, 345.1, 393, 434,
        227.9, 422, 383.9, 392.3, 352.2)
 
# Create a data frame
myData <- data.frame(
group = rep(c("before", "after"), each = 10),
weight = c(before, after)
)
 
# Print all data
print(myData)
 
# Paired Samples Wilcoxon Test
result = wilcox.test(before, after, paired = TRUE)
 
# Printing the results
print(result)


Output: 

   group weight
1  before  190.1
2  before  190.9
3  before  172.7
4  before  213.0
5  before  231.4
6  before  196.9
7  before  172.2
8  before  285.5
9  before  225.2
10 before  113.7
11  after  392.9
12  after  313.2
13  after  345.1
14  after  393.0
15  after  434.0
16  after  227.9
17  after  422.0
18  after  383.9
19  after  392.3
20  after  352.2

    Wilcoxon signed rank test

data:  before and after
V = 0, p-value = 0.001953
alternative hypothesis: true location shift is not equal to 0

In the above output, the p-value of the test is 0.001953, which is less than the significance level alpha = 0.05. We can conclude that the median weight of the mice before treatment is significantly different from the median weight after treatment with a p-value = 0.001953.

If one wants to test whether the median weight before treatment is less than the median weight after treatment, then the code will be: 

R




# R program to illustrate
# Paired Samples Wilcoxon Test
 
# The data set
# Weight of the rabbit before treatment
before <-c(190.1, 190.9, 172.7, 213, 231.4,
        196.9, 172.2, 285.5, 225.2, 113.7)
 
# Weight of the rabbit after treatment
after <-c(392.9, 313.2, 345.1, 393, 434,
        227.9, 422, 383.9, 392.3, 352.2)
 
# Create a data frame
myData <- data.frame(
group = rep(c("before", "after"), each = 10),
weight = c(before, after)
)
 
# Paired Samples Wilcoxon Test
result = wilcox.test(weight ~ group,
                    data = myData,
                    paired = TRUE,
                    alternative = "less")
 
# Printing the results
print(result)


Output: 

Wilcoxon signed rank test

data:  weight by group
V = 55, p-value = 1
alternative hypothesis: true location shift is less than 0

Or, If one wants to test whether the median weight before treatment is greater than the median weight after treatment, then the code will be: 

R




# R program to illustrate
# Paired Samples Wilcoxon Test
 
# The data set
# Weight of the rabbit before treatment
before <-c(190.1, 190.9, 172.7, 213, 231.4,
        196.9, 172.2, 285.5, 225.2, 113.7)
 
# Weight of the rabbit after treatment
after <-c(392.9, 313.2, 345.1, 393, 434,
        227.9, 422, 383.9, 392.3, 352.2)
 
# Create a data frame
myData <- data.frame(
group = rep(c("before", "after"), each = 10),
weight = c(before, after)
)
 
# Paired Samples Wilcoxon Test
result = wilcox.test(weight ~ group,
                    data = myData,
                    paired = TRUE,
                    alternative = "greater")
 
# Printing the results
print(result)


Output: 

Wilcoxon signed rank test

data:  weight by group
V = 55, p-value = 0.0009766
alternative hypothesis: true location shift is greater than 0


Last Updated : 05 Jul, 2023
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