If I have the `data.tables`

`DT`

and `neighbors`

:

```
set.seed(1)
library(data.table)
DT <- data.table(idx=rep(1:10, each=5), x=rnorm(50), y=letters[1:5], ok=rbinom(50, 1, 0.90))
n <- data.table(y=letters[1:5], y1=letters[c(2:5,1)])
```

`n`

is a lookup table. Whenever `ok == 0`

, I want to look up the corresponding `y1`

in `n`

and use that value for `x`

and the given `idx`

. By way of example, row 4 of DT:

```
> DT
idx x y ok
1: 1 -0.6264538 a 1
2: 1 0.1836433 b 1
3: 1 -0.8356286 c 1
4: 1 1.5952808 d 0
5: 1 0.3295078 e 1
6: 2 -0.8204684 a 1
```

The `y1`

from `n`

for `d`

is `e`

:

```
> n[y == 'd']
y y1
1: d e
```

and `idx`

for row 4 is 1. So I would use:

```
> DT[idx == 1 & y == 'e', x]
[1] 0.3295078
```

I want my output to be a `data.table`

just like `DT[ok == 0]`

with all the `x`

values replaced by their appropriate n['y1'] `x`

value:

```
> output
idx x y ok
1: 1 0.3295078 d 0
2: 2 -0.3053884 d 0
3: 3 0.3898432 a 0
4: 5 0.7821363 a 0
5: 7 1.3586800 e 0
6: 8 0.7631757 d 0
```

I can think of a few ways of doing this with base R or with `plyr`

... and maybe its late on Friday... but whatever the sequences of merges that this would require in `data.table`

is beyond me!