# Select groups which have at least one of a certain value

How to select groups based on a condition on the individual rows, say keep all groups that contain at least one (ANY) of a certain value, e.g. 4, (or any other condition that is `TRUE` at least once). Or phrased the other way around: if a group does not have any rows where condition is true, the entire group should be removed.

Let's take a very simple data, with two groups, and I want to select the group that has at least one row with a `Value` of 4, (i.e. group B here)

``````library(dplyr)
df <- data.frame(Group = LETTERS[c(1,1,1,2,2,2)], Value=c(1:5, 4))

df
#   Group Value
# 1     A     1 # Group A has no values == 4 ~~> remove entire group
# 2     A     2
# 3     B     3
# 4     B     4 # Group B has at least one 4 ~~> keep the whole group
``````

Doing `group_by()` and then `filter` (as in this post) will only select individual rows that contains a value of 4, not the whole group:

``````df %>%
group_by(Group) %>%
filter(Value == 4)
#    Group Value
#   <fctr> <int>
# 1      B     4
``````
• In base R, `df[with(df, ave(Value == 4, Group, FUN = any)), ]` Nov 27, 2016 at 2:56

This turns out to be pretty easy: you just need to use the `any()` function in the `filter` call. Indeed, it appears that:

• `filter(any(...))` evaluates at the `group_by()` level,

• `filter(...)` evaluates at the `rowwise()` level, even when preceded by `group_by()`.

Hence use:

`````` df %>%
group_by(Group) %>%
filter(any(Value==4))

Group Value
<fctr> <int>
1      B     3
2      B     4
``````

Interestingly, the same appear with mutate, compare:

``````df %>%
group_by(Group) %>%
mutate(check1=any(Value==4),
check2=Value==4)

Group Value check1 check2
<fctr> <int>  <lgl>  <lgl>
1      A     1  FALSE  FALSE
2      A     2  FALSE  FALSE
3      B     3   TRUE  FALSE
4      B     4   TRUE   TRUE
``````
• When I run exactly the same code above, for check1, I get all as TRUE. anybody know why? Oct 3, 2021 at 8:40
• That's surprising indeed! Are you doing the `group_by` ? Which version of dplyr do you have? Oct 11, 2021 at 23:15

A `data.table` option is

``````library(data.table)
setDT(df)[, if(any(Value==4)) .SD, by = Group]
#   Group Value
#1:     B     4
#2:     B     5
#3:     B     4
``````

In base R, without performing any grouping operation we can do :

``````subset(df, Group %in% unique(Group[Value == 4]))

#  Group Value
#4     B     4
#5     B     5
#6     B     4
``````