# Check frequency of data.table value in other data.table

`````` library(data.table)
DT1 <- data.table(num = 1:6, group = c("A", "B", "B", "B", "A", "C"))
DT2 <- data.table(group = c("A", "B", "C"))
``````

I want to add a column `popular` to `DT2` with value `TRUE` whenever `DT2\$group` is contained in `DT1\$group` at least twice. So, in the example above, `DT2` should be

``````    group popular
1:     A    TRUE
2:     B    TRUE
3:     C   FALSE
``````

What would be an efficient way to get to this?

Updated example: `DT2` may actually contain more groups than `DT1`, so here's an updated example:

`````` DT1 <- data.table(num = 1:6, group = c("A", "B", "B", "B", "A", "C"))
DT2 <- data.table(group = c("A", "B", "C", "D"))
``````

And the desired output would be

``````    group popular
1:     A    TRUE
2:     B    TRUE
3:     C   FALSE
4:     D   FALSE
``````
• Does `DT2` always have the same unique `group` from `DT1`? If so, it's simply `DT1[, .(popular = .N >= 2L), by=group]`
– Arun
Oct 19 '14 at 17:57
• Hi @Arun, no it does not; I over-simplified the example here, sorry. `DT2` may contain more groups than `DT1`, in which case popular should be `FALSE` (as it's not contained in `DT1\$group` at least twice). Oct 19 '14 at 18:04
• +1 for a well-formulated question Oct 19 '14 at 18:21
• here is the non data table way! `table(factor(DT1\$group, levels = unique(DT2\$group))) >= 2`
– rawr
Oct 19 '14 at 20:18

I'd just do it this way:

``````## 1.9.4+
setkey(DT1, group)
DT1[J(DT2\$group), list(popular = .N >= 2L), by = .EACHI]
#    group popular
# 1:     A    TRUE
# 2:     B    TRUE
# 3:     C   FALSE
# 4:     D   FALSE ## on the updated example
``````

`data.table`'s join syntax is quite powerful, in that, while joining, you can also aggregate / select / update columns in `j`. Here we perform a join. For each row in `DT2\$group`, on the corresponding matching rows in `DT1`, we compute the `j`-expression `.N >= 2L`; by specifying `by = .EACHI` (please check 1.9.4 NEWS), we compute the `j`-expression each time.

In `1.9.4`, `.()` has been introduced as an alias in all `i`, `j` and `by`. So you could also do:

``````DT1[.(DT2\$group), .(popular = .N >= 2L), by = .EACHI]
``````

When you're joining by a single character column, you can drop the `.()` / `J()` syntax altogether (for convenience). So this can be also written as:

``````DT1[DT2\$group, .(popular = .N >= 2L), by = .EACHI]
``````
• Professional data-tabler Oct 19 '14 at 18:14
• That it is pure magic. You have to add some info for future readers Oct 19 '14 at 18:15
• One more vote and you'll get your `data.table` gold badge tonight :) Oct 19 '14 at 18:30

This is how I would do it: first count the number of times each group appears in `DT1`, then simply join `DT2` and `DT1`.

``````require(data.table)
DT1 <- data.table(num = 1:6, group = c("A", "B", "B", "B", "A", "C"))
DT2 <- data.table(group = c("A", "B", "C"))

#solution:
DT1[,num_counts:=.N,by=group] #the number of entries in this group, just count the other column
setkey(DT1, group)
setkey(DT2, group)
DT2 = DT1[DT2,mult="last"][,list(group, popular = (num_counts >= 2))]

#> DT2
#   group popular
#1:     A    TRUE
#2:     B    TRUE
#3:     C   FALSE
``````
• This can be simplified further by aggregating `DT1` instead of `updating` it.
– Arun
Oct 19 '14 at 17:56
• i think updating is more efficient: aggregating would involve copying while updating does not require any copying
– Alex
Oct 19 '14 at 18:04