Every time I get a new data set the first thing I do is check out the summary statistics. The `summary`

function does a pretty good job, but I'm frequently interested in standard deviations, quantiles with different breakpoints, number of observations, etc. Also, the presentation of `summary`

isn't really the easiest way to digest or what you see in journals (i.e., `summary`

is horizontal instead of vertical).

For example, here is what I get from summary with some made up data.

```
> library(plyr)
> library(reshape2)
> my.data <- data.frame(firm = factor(rep(letters[1:5], each = 5)), returns = rnorm(n = 5 * 5), leverage = rep(c(0.3, 0.4, 0.5, 0.6, 0.7), each = 5) + .... [TRUNCATED]
> my.summary <- summary(my.data)
> my.summary
firm returns leverage
a:5 Min. :-1.6765 Min. :0.2863
b:5 1st Qu.:-0.6945 1st Qu.:0.3929
c:5 Median :-0.1930 Median :0.5061
d:5 Mean :-0.1159 Mean :0.5009
e:5 3rd Qu.: 0.4323 3rd Qu.:0.6011
Max. : 1.1915 Max. :0.7093
```

But let's say I really want something more like this.

```
> my.manual.summary <- data.frame(mean = c(mean(my.data$returns), mean(my.data$leverage)), median = c(median(my.data$returns), median(my.data$leverage .... [TRUNCATED]
> rownames(my.manual.summary) <- c("returns", "leverage")
> my.manual.summary
mean median sd
returns -0.1158633 -0.1929571 0.6996548
leverage 0.5008895 0.5061301 0.1453381
```

For this small data set (i.e., just a few firm characteristics) this is easy. But I have more or what to do more statistics or more slicing-dicing, it can get tedious.

I tried this with `reshape2`

and `plyr`

, but get an error.

```
> my.melted.data <- melt(my.data)
Using firm as id variables
> my.improved.summary <- ddply(my.melted.data[, -1], .(variable), c("mean", "median", "sd"), na.rm = T)
Error in proto[[i]] <- fs[[i]](x, ...) :
more elements supplied than there are to replace
In addition: Warning messages:
1: In mean.default(X[[1L]], ...) :
argument is not numeric or logical: returning NA
2: In mean.default(sort(x, partial = half + 0L:1L)[half + 0L:1L]) :
argument is not numeric or logical: returning NA
3: In var(as.vector(x), na.rm = na.rm) : NAs introduced by coercion
4: In mean.default(X[[1L]], ...) :
argument is not numeric or logical: returning NA
```

This leaves me with two questions:

- What am I doing wrong with
`ddply`

? - Am I re-inventing the wheel here? Given that this is table 1 in everything I read and write, is there an existing solution that I haven't found?

Thanks!