# Descriptive tables - how to create a table containing both numeric and categorical variables

I can't find a really intuitive way of doing the most basic thing; creating a summary table with my base variables. The best method I've found is currently using tapply:

seed(200)
my_stats <- function(x){
if (is.factor(x)){
a <- table(x, useNA="no")
b <- round(a*100/sum(a),2)

# If binary
if (length(a) == 2){
ret <- paste(a[1], " (", b[1], " %)", sep="")
}
return(ret)
}else{
ret <- mean(x, na.rm=T)
if (ret < 1){
ret <- round(ret, 2)
}else{
ret <- round(ret)
}
return(ret)
}
}

library(rms)
groups <- factor(sample(c("Group A","Group B"), size=51, replace=T))
a <- 3:53
b <- rnorm(51)
c <- factor(sample(c("male","female"), size=51, replace=T))

res <- rbind(a=tapply(a, groups, my_stats),
b=tapply(b, groups, my_stats),
c=tapply(c, groups, my_stats))
latex(latexTranslate(res))


The res contains:

> res
Group A     Group B
a "28"        "28"
b "-0.08"     "-0.21"
c "14 (56 %)" "14 (53.85 %)"


Now this works but it seems very complex and not the most elegant solution. I've tried to search for how to create descriptive tables but the all focus on the table(), prop.table(), summary() for just single variable or variables of the same kind.

My question: Is there a package/function that allows an easy way of creating a good-looking latex table? If so, please give a hint of how to get the above result.

Thanks!

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Which question is your question? The one in the title about creating a table with summary information about your variables, or the one at the end about making a pretty latex table? –  Seth Jan 13 '12 at 22:33
Sorry for the confusion I'm mostly interested in just getting the cells. Formatting LaTeX perhaps not really an R issue –  Max Gordon Jan 14 '12 at 10:08

If you rewrite your function so that it always returns a string (it sometimes returns a string, sometimes a number, sometimes NULL), you can call ddply on the data.frame, without having to specify all the columns.

f <- function(u) {
res <- "?"
if(is.factor(u) || is.character(u)) {
u <- table(u, useNA = "no")
if (length(u) == 0 || sum(u) == 0) { res <- "NA" }
else { res <- sprintf( "%0.0f%%", 100 * u[1] / sum(u) ) }
} else {
u <- mean(u, na.rm=TRUE)
if(is.na(u)) { res <- "NA" }
else { res <- sprintf( ifelse( abs(u) < 1, "%0.2f", "%0.0f" ), u ) }
}
return( res )
}
# Same function, for data.frames
g <- function(d) do.call( data.frame, lapply(d, f) )

library(plyr)
ddply(data.frame(a,b,c), .(groups), g)


Since you want LaTeX tables, you may also want to try the following, which does not group the data, but adds sparkline histograms for the numeric variables.

library(Hmisc)
latex(describe(d), file="")

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Thank you for your answer, this suited my needs the best and I also like the answer since I've completely forgot about the beautiful sprintf() function (or rather, I didn't think it existed in R). The sparkline histograms are really nice and perhaps I'll try to add them in some way to my table. I don't know if the journals accept that kind of advanced tables. –  Max Gordon Jan 15 '12 at 12:09

What you're asking is a tad open ended, since there's the distinct possibility that you will disagree with me on what constitutes a "good-looking LaTeX table".

For instance, I would probably prefer to organize this by row, rather than by column:

require(plyr)
require(xtable)
dat <- data.frame(a,b,c,groups)
xtable(ddply(dat,.(groups),summarise,a = my_stats(a),
b = my_stats(b),
c = my_stats(c)))

\begin{table}[ht]
\begin{center}
\begin{tabular}{rlrrl}
\hline
& groups & a & b & c \\
\hline
1 & Group A & 28.00 & 0.14 & 13 (52 \%) \\
2 & Group B & 28.00 & -0.00 & 13 (50 \%) \\
\hline
\end{tabular}
\end{center}
\end{table}


And of course, much of that is customizable if you look at ?xtable and also ?print.xtable.

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Look at the tables package for another way that may make this simpler.