Flexible functions R

I have written some code to create my own descriptive statistics table since the default `summary` doesn't do what I want.

Now what I would like is to create a flexible / dynamic function that does this with varying number of variables.

My code looks like this:

``````N <- c( length(data1), length(data2), length(data3) )
mean<- c( mean(data1), mean(data2), mean(data3) )
sd <- c( sd(data1), sd(data2), sd(data3) )
min <- c( min(data1), min(data2), min(data3) )
max <- c( max(data1), max(data2), max(data3) )
print(q) <- data.frame(N, mean, sd, min, max)
``````

So instead of editing this if i want descriptive of something else than 3 variables I would like a function that did something like this;

``````descriptive <- function(data1, ...) {
N <- c( length(data1), length(...) )
mean<- c( mean(data1), mean(...) )
sd <- c( sd(data1), sd(...) )
min <- c( min(data1), min(...) )
max <- c( max(data1), max(...) )
q <- data.frame(N, mean, sd, min, max)
print(q)
}
``````

I tried the above and hoped it would work, but it only works with two variables. As you might see, I am new to R. I have tried to search for a solution, but I've not been able to find one. But if R is as good as "they" say, I think something like this should be possible.

There's probably a function that already does this, but I would like to be able to do it my self. (: Hope someone can help me!

EDIT!!

Thank you all for your answers, they all seem to work. This shows there are multiple answers to the same question in R. I don't know if you get points for the accepted answer and if this is important, but I choose Arun answers since it comes closed to my aim of creating a descriptive table that is "good looking" and flexible.

If anyone in the future is interested I've add this to Arun answer that makes it fit my purpose perfect;

``````data <- list(var1, var2 ...)
names <- c"name1", "name2", "...")
descriptive(data)
``````

This solution also seems to have the benefit of variables of different lengths vs data frames.

-

You can provide a `list` as input to your function argument and then use `sapply` on each to get the statistic for each data.

``````descriptive <- function(ll) {
N <- sapply(ll, length)
mean <- sapply(ll, mean)
sd <- sapply(ll, sd)
min <- sapply(ll, min)
max <- sapply(ll, max)
print(out <- data.frame(N, mean, sd, min, max))
}

descriptive(list(1:5, 6:10))

N mean       sd min max
1 5    3 1.581139   1   5
2 5    8 1.581139   6  10
``````

Note: This'll work even if your input is a `data.frame` and you require statistics on all columns of your data.frame (as it's internally a list).

``````descriptive(data.frame(1:5, 6:10))
N mean       sd min max
X1.5  5    3 1.581139   1   5
X6.10 5    8 1.581139   6  10
``````
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Or use `function(...) ll <- list(...)` –  Joshua Ulrich Aug 6 '13 at 21:11

This would be a good opportunity to learn the `apply` family of functions, so that you can specify your intended output as a function and then `apply` that to a dataframe.

``````mydf <- data.frame(x=rnorm(100), y=rnorm(100)) # example data

descriptive <- function(x)
c(length=length(x), mean=mean(x), sd=sd(x), min=min(x), max=max(x))

sapply(mydf, descriptive) # apply `descriptive` to the df
``````

The output:

``````                   x             y             z
length  1.000000e+03 1000.00000000 1000.00000000
mean    3.846765e-03   -0.02009427    0.02001385
sd      9.818488e-01    0.97662850    1.01543571
min    -2.905149e+00   -3.25904432   -3.33017918
max     3.235993e+00    2.86892044    3.13183601
``````

One caution with this is that unless you develop a more sophisticated `descriptive` function, it won't be able to handle `NA` values in your data and will cause you problems for variables of different classes in the dataframe (e.g., the mean of a character vector is `NA`).

This is also more efficient than building a function that internally applies to a list of vectors (as Arun suggests) and plyr (from Baptiste: `ldply(mydf, each(length, mean, sd, min, max))`):

``````mydf <- data.frame(x=rnorm(1e5),y=rnorm(1e5),z=rnorm(1e5))
microbenchmark(sapply(mydf,thomas), arun(mydf), baptiste(mydf))

Unit: milliseconds
expr       min        lq    median        uq      max neval
sapply(mydf, thomas)  5.693252  6.039458  7.139658  7.953309 43.32675   100
arun(mydf) 15.805778 18.522889 19.417559 22.016125 57.93630   100
baptiste(mydf) 10.995073 11.597998 12.666252 13.861521 47.85533   100
``````
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`apply` and data frames don't go well together, since it turns its argument into a matrix. Use `lapply` instead. –  Hong Ooi Aug 6 '13 at 21:05
@HongOoi Thanks! –  Thomas Aug 6 '13 at 21:07
with plyr, `ldply(mydf, each(length, mean, sd, min, max))` –  baptiste Aug 6 '13 at 21:19
@baptiste I like that syntax, it's very succinct. –  Thomas Aug 6 '13 at 21:23
@Arun updated with a better test and the data. –  Thomas Aug 6 '13 at 21:27

If you really want to be able to use `...`:

``````test <- list( seq(10), seq(5) )

descriptiveRow <- function(x) {
res <- c(length(x), mean(x), sd(x), min(x), max(x))
names(res) <- c("N","Mean","SD","Min","Max")
res
}

descriptive <- function( ... ) {
l <- list(...)
res <- as.data.frame( lapply( l, descriptiveRow ) )
colnames(res) <- seq(ncol(res))
res
}

descriptive(test[[1]], test[[2]])

> descriptive(test[[1]], test[[2]])
1        2
N    10.00000 5.000000
Mean  5.50000 3.000000
SD    3.02765 1.581139
Min   1.00000 1.000000
Max  10.00000 5.000000
``````
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