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I have a data frame and I'd like to use mutate to populate a "e_value" column that is the value for the "e" metric within a group so I use dplyr and group_by the group then mutate using value[metric == "e"] but this is returning an error when there is no metric == e within a group like in group C below. Is there a way to just return the f metric when there is no e metric?

library(dplyr)

# this code does not work because there is no e metric in group C
data =data.frame(group = c("A","A","B","B","C"),metric=c("e","f","e","f","f"),value = c(1,2,3,4,5))
data %>% group_by(group) %>% mutate( e_value = value[metric == "e"]  )



##  this code below  work becuase there is always an e metric
    data =data.frame(group = c("A","A","B","B"),metric=c("e","f","e","f"),value = c(1,2,3,4))
    data %>% group_by(group) %>% mutate( e_value = value[metric == "e"]  )

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  • 1
    What is the expected output for the first example? – neilfws Feb 1 '18 at 23:02
  • Is this what you want: data %>% group_by(group) %>% filter(metric == "e")? – hplieninger Feb 2 '18 at 7:50
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You can insert an ifelse to make it conditional.

data %>%
  group_by(group) %>%
  mutate(
    e_value = ifelse(is.null(value[metric == "e"]), NA, value[metric == "e"])
  )

# # A tibble: 5 x 4
# # Groups:   group [3]
#   group metric value e_value
#   <fct> <fct>  <dbl>   <dbl>
# 1 A     e       1.00    1.00
# 2 A     f       2.00    1.00
# 3 B     e       3.00    3.00
# 4 B     f       4.00    3.00
# 5 C     f       5.00   NA  
  • Can you make group 5? – user3022875 Feb 1 '18 at 23:49
  • @user3022875, that depends on your rules... there is only one possible value in your test case... so you can simply replace the NA in my ifelse with value. But which do you choose if there are more than one option? You could use first(value), or last, or mean... whatever suits your requirement. The alternate solution by @maurits-evers is effectively identical. – Kevin Arseneau Feb 1 '18 at 23:55
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Or like this using %in%:

data %>% group_by(group) %>% mutate(e_value = ifelse("e" %in% metric, value, NA));
## A tibble: 5 x 4
## Groups:   group [3]
#   group metric value e_value
#  <fctr> <fctr> <dbl>   <dbl>
#1      A      e     1       1
#2      A      f     2       1
#3      B      e     3       3
#4      B      f     4       3
#5      C      f     5      NA
  • Can you make group C show 5? – user3022875 Feb 1 '18 at 23:48
  • 1
    @user3022875 That's not very logical IMO; but you can do data %>% group_by(group) %>% mutate(e_value = ifelse("e" %in% metric, value, NA)) %>% mutate(e_value = replace(e_value, is.na(e_value), value)) – Maurits Evers Feb 1 '18 at 23:56

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