2

I have a dataframe df with only string values. I need to aggregate these rows on idand session and fill the NA values. My original dataframe has 50 columns but this is just an example dataframe. You can assume that for each combination of id and session the values (string1 or string2) are the same, if they don't have an NA value.

session <- c('s1', 's1', 's1', 's2', 's2', 's2')
string1 <- c('first_string1', NA, 'first_string1', NA, 'first_string3', NA)
string2 <- c(NA, 'second_string2', 'second_string2', 'second_string4', NA, NA)
df <- data.frame(id, session, string1, string2)

df

  id session       string1        string2
1  a      s1 first_string1           <NA>
2  a      s1          <NA> second_string2
3  a      s1 first_string1 second_string2
4  b      s2          <NA> second_string4
5  b      s2 first_string3           <NA>
6  b      s2          <NA>           <NA>

The final dataframe should look like this:

  id session       string1        string2
1  a      s1 first_string1 second_string2
2  b      s2 first_string3 second_string4

I have tried to using the aggregate function but I can't figure out how to get this working

  • What is the logic by which first_string3 is associated with second_string4, given that neither are actually adjacent to each other anywhere in the starting data frame? – Tim Biegeleisen Jul 18 '19 at 11:14
  • Thay both have the same id and session – Jelmer Jul 18 '19 at 11:18
2

With aggregate you can do something like this, where you include a function that removes NAs and finds unique rows while aggregating:

aggregate(df[c("string1", "string2")],
          by = list(id = id, session = session),
          function(x) unique(na.omit(x)))

#### OUTPUT ####

  id session       string1        string2
1  a      s1 first_string1 second_string2
2  b      s2 first_string3 second_string4

Base R's merge is another, perhaps slightly easier to understand, option:

unique(na.omit(merge(df[c("id", "session", "string1")],
                     df[c("id", "session", "string2")],
                     by = c("id", "session")
                     )))

#### OUTPUT #### 

  id session       string1        string2
1  a      s1 first_string1 second_string2
2  b      s2 first_string3 second_string4
| improve this answer | |
1

Another option is:

library(dplyr)

df %>%
  group_by(id, session) %>%
  summarise_at(vars(starts_with("string")), ~unique(na.omit(.)))

# A tibble: 2 x 4
# Groups:   id [2]
  id    session string1       string2       
  <chr> <chr>   <chr>         <chr>         
1 a     s1      first_string1 second_string2
2 b     s2      first_string3 second_string4

A base R solution

aggregate(cbind(string1, string2) ~ id + session, data = df, function(x) unique(na.omit(x)), na.action = na.pass)

  id session       string1        string2
1  a      s1 first_string1 second_string2
2  b      s2 first_string3 second_string4

| improve this answer | |
0

A bit clunky, but works:

library(tidyverse)

df %>% 
  group_by (id, session) %>%
  summarise(string1 =  paste(unique(string1[!is.na(string1)]), collapse = ""),
            string2 =  paste(unique(string2[!is.na(string2)]), collapse = ""))

Output:

id    session string1       string2       
  <fct> <fct>   <chr>         <chr>         
1 a     s1      first_string1 second_string2
2 b     s2      first_string3 second_string4
| improve this answer | |

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