This is related to a prior question which can be found in:

Replace a numerical value by NA based on conditions from other columns:

Below is the data:

```
DT <- data.table(a = sample(c("C","M","Y","K"), 100, rep=TRUE),
b = sample(c("A","S"), 100, rep=TRUE),
f = round(rnorm(n=100, mean=.90, sd=.08),digits = 2) ); DT
```

I would like an elegant and succinct re-write for the following functions:

```
`%between%` <- function(x, vals) { x >= vals[1] & x <= vals[2]}
`%nbetween%` <- Negate(`%between%`)
```

and the following script to replace a certain values that meet certain conditions with NA

```
DT[a == "C" & b %in% c("A", "S") & f %nbetween% c(.85, .95), f := NA]
DT[a == "M" & b %in% c("A", "S") & f %nbetween% c(.85, .95), f := NA]
DT[a == "Y" & b %in% c("A", "S") & f %nbetween% c(.80, .90), f := NA]
DT[a == "K" & b %in% c("A", "S") & f %nbetween% c(.95, 1.10), f := NA]
```

`keys`

on your`data.table`

and the`J()`

function to do your subsetting to avoid vector searches. – Justin Apr 2 '13 at 17:29