Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Is there an easy way to get ride of the traditional quartiles returned by summary.formula with method="reverse" from the Hmisc R library? I would like to get the Mean/SD + Min/Max for each of my continuous variable but didn't succeed. It is possible to pass a custom function call through the argument fun, but it doesn't work when method="reverse".

share|improve this question
3  
mail-archive.com/r-help@r-project.org/msg86002.html - a thing what you could do is to manipulate the function summary itself and create your own package with a summary2 function :P –  Gnark Sep 20 '10 at 14:40
    
A self-contained example would really help... especially for those of us who are not familiar with summary.formula. –  Joshua Ulrich Sep 21 '10 at 10:44
    
@Gnark I don't really like rewriting Frank Harrell's functions, unless I expect to benefit from his LaTeX exportation backend. Anyway, it's always an option :) –  chl Sep 22 '10 at 9:24

3 Answers 3

up vote 1 down vote accepted

The answer is no. The package author has decided (as he states in the post Gnark linked to) that the minimum, maximum, and standard error are (paraphrasing) "certainly not descriptive" of continuous variables by categorical group.

You can set prmsd=TRUE in print.summary.formula.reverse to get the mean and standard deviation, but there's no way to get the min or max.

> Data <- data.frame(y=sample(1:2,20,TRUE),x=rnorm(20))
> print(summary.formula(y ~ x,data=Data,method="reverse"),prmsd=TRUE)


Descriptive Statistics by y

+-+---------------------------------------------------------+---------------------------------------------------------+
| |1                                                        |2                                                        |
| |(N=11)                                                   |(N=9)                                                    |
+-+---------------------------------------------------------+---------------------------------------------------------+
|x|-0.5382053/-0.3375862/ 0.3093839  -0.1434995+/- 1.1113628|-0.4464168/-0.1677906/ 0.3007129   0.1234988+/- 0.9666382|
+-+---------------------------------------------------------+---------------------------------------------------------+
share|improve this answer
    
It seems we wrote our response quite at the same time... In fact, Harrell uses an internal function called sfn which call the quantile() function, so I think we can replace this by a call to range() to get our results, and overwrite the internal function, no? –  chl Sep 22 '10 at 14:29
    
@chl: you can try, but I doubt it's that easy. The function (or others you use) may expect those three quantiles later. –  Joshua Ulrich Sep 22 '10 at 16:05

Does it have to be within the Hmisc package? If you have a dataframe of continuous variables you could get the same result with a simple use of the reshape package:

df <- data.frame(a=rnorm(100),b=rnorm(100),c=rnorm(100))

f.summary <- function(x) {
x <- melt(x)
x <- cast(x, variable ~ ., c(mean, sd, min, max))
return(x)
} 

f.summary(df)

HTH

share|improve this answer
    
Thanks! Actually I managed to write something similar, but without reshape; your solution looks by far better than mine :) –  chl Sep 22 '10 at 9:22

Arf... I just look at the code of summary.formula() in the Hmisc package and I can confirm that Mean and SD are indeed computed but not shown when printing on the command line. So, we have to ask for it explicitely when calling the print() function, e.g.

library(Hmisc)
df <- data.frame(g=sample(LETTERS[1:3], 100, rep=TRUE), replicate(3, rnorm(100)))
s <- summary(g ~ ., method="reverse", data=df)
latex(s, prmsd=TRUE, digits=2)  # replace latex by print to output inline

which yields the following Table:

alt text

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.