1

Suppose we have a dataframe called "df", and we want to know the skewness and kurtosis values for a variable within df called "x". Suppose we use:

psych::describe(df$x)

And get the following result:

  vars n  mean  sd median  trimmed mad   min max range  skew  kurtosis  se
1   1 478 98.54 19  102.5  100.57 18.53  34  125  91    -0.94   0.47    0.87

To what is the last value, the se, referring? The standard error of skew or kurtosis?

1

se refers to the "standard error of the mean"

NB: you can read the source code typing describe in the R terminal.

In any case, as a double check, here it is the output of describe on the iris dataset

unlist(sapply(iris[1:4], describe)[13,])

#output
Sepal.Length  Sepal.Width Petal.Length  Petal.Width 
0.06761132   0.03558833   0.14413600   0.06223645 

and here the output of a my handwritten function for the standard error of the mean

sapply(iris[1:4], sem)

#output
Sepal.Length  Sepal.Width Petal.Length  Petal.Width 
0.06761132   0.03558833   0.14413600   0.06223645 

p.s. my sem function

function(x) {
    sqrt(var(x)/length(x))
}
  • Thanks for your help. Do you know of any way to get skewness and kurtosis values, with their standard errors, for univariate distributions? All the functions I find seem to only provide the single value but no se. – Wade Byron Profe Apr 15 '16 at 10:32
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    Hi, there is the rela library. From the linked manual: Skewness, standard error of the skew, lower and upper values of the skew.; and Kurtosis, standard error of kurtosis as well as its respective 95 % confidence interval values. Alternatively, you can write your own functions following my sem example. – Pasqui Apr 15 '16 at 10:39
  • @WadeByronProfe, please, if your like the answer, you can accept it :) – Pasqui Apr 15 '16 at 20:19

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