I have a series of annual incident counts per category, with no rows for years in which the category did not see an incident. I would like to add a column that shows, for each year, how many incidents occurred in the previous three years.

One way to handle this is to add empty rows for all years with zero incidents, then use `rollapply()`

with a left-aligned four year window, but that would expand my data set more than I want to. Surely there's a way to use `ddply()`

and `transform`

for this?

The following two lines of code build a dummy data set, then execute a simple `plyr`

sum by category:

```
dat <- data.frame(
category=c(rep('A',6), rep('B',6), rep('C',6)),
year=rep(c(2000,2001,2004,2005,2009, 2010),3),
incidents=rpois(18, 3)
)
ddply(dat, .(category) , transform, i_per_c=sum(incidents) )
```

That works, but it only shows a per-category total.

I want a total that's year-dependent.

So I try to expand the `ddply()`

call with the `function()`

syntax, like so:

```
ddply(dat, .(category) , transform,
function(x) i_per_c=sum(ifelse(x$year >= year - 4 & x$year < year, x$incidents, 0) )
)
```

This just returns the original data frame, unmodified.

I must be missing something in the `plyr`

syntax, but I don't know what it is.

Thanks, Matt