# Function for mean and sem in Sweave/knitr implementation

I am brainstorming to write a mean and sem function for Sweave/knitr use. And for my limited knowledge it look like this

m.se <- function (x, na.rm = TRUE) {
if (na.rm)
x <- x[!is.na(x)]
n <- length(x)
if (n == 0)
return(c(mean = NA, sem = NA))
xbar <- sum(x)/n
se <- sqrt(sum((x - xbar)^2)/(n - 1))/sqrt(n)
c(mean = xbar, sem = se)
return(paste(xbar,"\\pm",se))
}


It really does some job and it give output like:

43.9303846153846 \pm 3.34823050767781


The problem is it does not respect option() that I define in main environment (setup chunk in knitr). How can I solve this problem.

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I think the format function will do the trick:

R> 1.1111111
[1] 1.111
R> paste(1.1111111)
[1] "1.1111111"
R> paste(format(1.1111111))
[1] "1.111"


So in your case,

paste(format(xbar), "\\pm", format(se))

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Dear csgillespie , thanks for tip, indeed. –  Rafik Margaryan Jan 3 '13 at 20:50

Your code for the mean and standard deviation is not optimal. As Dieter Menne mentioned, you can simply use the built-in mean() and sd() if you are not doing this for exercise purposes.

The knitr package has made a lot of efforts to better print numbers, and I recommend you to use these facilities instead of inventing your own formatting rules. See below for my solution (\Sexpr{} will respect options('digits')):

\documentclass{article}
\begin{document}

<<mean-sem>>=
options(digits = 3)
m.se <- function (x, ...) {
n <- length(x)
if (n == 0) return(c(mean = NA, sem = NA))
se <- sd(x, ...)/sqrt(n)
c(mean = mean(x, ...), sem = se)
}
res <- m.se(rnorm(100))
@

What you want is $\Sexpr{res['mean']} \pm \Sexpr{res['sem']}$.

\end{document}


More importantly, this is a portable solution -- if you want an HTML version, you simply write <!--rinline res['mean']--> ± <!--rinline res['sem']-->, and you do not have to redefine your R function.

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Thanks Yihui, this is another solution. But when one writhes long and complex document, one must keep the coding part tidy, otherwise is is quiet confusing. But I did find solution, atleast it works for me. And code is m.se <- function (x, na.rm = TRUE) { if (na.rm) x <- x[!is.na(x)] n <- length(x) if (n == 0) return(c(mean = NA, sem = NA)) xbar <- sum(x)/n se <- sqrt(sum((x - xbar)^2)/(n - 1))/sqrt(n) c(mean = xbar, sem = se) return(paste(format(xbar),"$\\pm$",format(se))) } . @dieter-menne's code is more elegant but did not work for me. Thanks. –  Rafik Margaryan Jan 5 '13 at 9:41
@Yihui: Both are valid approaches, but when you write $\Sexpr{res['mean']} \pm \Sexpr{res['sem']}$ very often, having a shorthand that puts in the \pm into the Sexpr is helpful, so I tend to agree with Rafik. In old days with latex only, that was easy, but nowadays I try to make the print-classes aware of the latex/HTML processing context to output the correct separators. –  Dieter Menne Jan 5 '13 at 9:42
@DieterMenne That makes sense. Another minor issue is I would rather define the S3 method on format() instead of print(). –  Yihui Jan 5 '13 at 17:11

As @csgilliespie noted, the format statement will do the job, but this does not yet solve the problem that you probably want formatting to serve option(digit=3). Best do this in a two-step approach, by separating numerics from view. See for example print.lm (without the ()).

m.se <- function (x, na.rm = TRUE) {
if (na.rm)
x <- x[!is.na(x)]
n <- length(x)
if (n == 0)
return(c(mean = NA, sem = NA))
xbar <- sum(x)/n
se <- sqrt(sum((x - xbar)^2)/(n - 1))/sqrt(n)
ret = c(mean = xbar, sem = se)
class(ret) ="m.se"
ret
}

print.m.se = function(x, digits = max(3, getOption("digits") - 3),...){
print(paste(format(x["mean"],digits=digits), "//pm",format(x["sem"],digits=digits)))
invisible(x)
}

m.se(rnorm(10))

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Dear Dieter , thank you very much for your tip. –  Rafik Margaryan Jan 3 '13 at 20:50
This seems the right way to go. In majority of cases I use option(digits=2), in that case I every time must change the code setting max value and -3. Originally, I would like the code to respect .GlobalEnv option digits. In that case I would write digits=getOption("digits"). And I can confirm that it really worked for me. Thanks a lot. –  Rafik Margaryan Jan 3 '13 at 21:20
If you are using this function as an exercise in writing R code, it is fine. However, for serious work I recommend using the build in functions for variance which is better optimized against numeric problems. –  Dieter Menne Jan 4 '13 at 13:49
Hi @dieter-menne, it is still me straggling with this piece of code. When I do it in R it gives "mean \\pm sem" output as was disired. But when compiling with knitr in RStudio, it come out like "mean, sem" and no trace from \pm. How can I fix this code? –  Rafik Margaryan Jan 4 '13 at 14:28
Use the so called Dalgaard-rule: If you believe you have been using the right number of backslashed, double these. Four backslashed might be right, I remember a case of 8... –  Dieter Menne Jan 4 '13 at 15:12
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