I can achieve this task, but I feel like there must be a "best" (slickest, most compact, clearest-code, fastest?) way of doing it and have not figured it out so far ...

For a specified set of categorical factors I want to construct a table of means and variances by group.

**generate data**:

```
set.seed(1001)
d <- expand.grid(f1=LETTERS[1:3],f2=letters[1:3],
f3=factor(as.character(as.roman(1:3))),rep=1:4)
d$y <- runif(nrow(d))
d$z <- rnorm(nrow(d))
```

**desired output**:

```
f1 f2 f3 y.mean y.var
1 A a I 0.6502307 0.09537958
2 A a II 0.4876630 0.11079670
3 A a III 0.3102926 0.20280568
4 A b I 0.3914084 0.05869310
5 A b II 0.5257355 0.21863126
6 A b III 0.3356860 0.07943314
... etc. ...
```

**using aggregate/merge:**

```
library(reshape)
m1 <- aggregate(y~f1*f2*f3,data=d,FUN=mean)
m2 <- aggregate(y~f1*f2*f3,data=d,FUN=var)
mvtab <- merge(rename(m1,c(y="y.mean")),
rename(m2,c(y="y.var")))
```

**using ddply/summarise** (possibly best but haven't been able to make it work):

```
mvtab2 <- ddply(subset(d,select=-c(z,rep)),
.(f1,f2,f3),
summarise,numcolwise(mean),numcolwise(var))
```

results in

```
Error in output[[var]][rng] <- df[[var]] :
incompatible types (from closure to logical) in subassignment type fix
```

**using melt/cast** (maybe best?)

```
mvtab3 <- cast(melt(subset(d,select=-c(z,rep)),
id.vars=1:3),
...~.,fun.aggregate=c(mean,var))
## now have to drop "variable"
mvtab3 <- subset(mvtab3,select=-variable)
## also should rename response variables
```

Won't (?) work in `reshape2`

. Explaining `...~.`

to someone could be tricky!