5

I have a dataframe such as ;

COL1  COL2
A,A,A 2
B     1
C,C   4
D,D,D 1
A     4
F     2
C,C   1 

And I would like to first remove duplicate within COL1 and get:

COL1  COL2
A     2
B     1
C     4
D     1
A     4
F     2
C     1 

and then sum the same COL1 letter by the COL2 values and get :

COL1  COL2
A     6
B     1
C     5
D     1
F     2

Does someone have an idea, please? Here is the dataframe if it can helps:

structure(list(COL1 = structure(c(2L, 3L, 4L, 5L, 1L, 6L, 4L), .Label = c("A", 
"A,A,A", "B", "C,C", "D,D,D", "F"), class = "factor"), COL2 = c(2, 
1, 4, 1, 4, 2, 1)), class = "data.frame", row.names = c(NA, -7L
))
7

A base R option

aggregate(
  COL2 ~ .,
  transform(
    df,
    COL1 = gsub(",.*", "", COL1)
  ),
  sum
)

gives

  COL1 COL2
1    A    6
2    B    1
3    C    5
4    D    1
5    F    2
5

You can use separate_rows to split the data on comma in different rows, keep only unique values and aggregate.

library(dplyr)
library(tidyr)

df %>%
  mutate(row = row_number()) %>%
  separate_rows(COL1, sep = ',\\s*') %>%
  distinct(row, COL1, .keep_all = TRUE) %>%
  group_by(COL1) %>%
  summarise(COL2 = sum(COL2, na.rm = TRUE))

#  COL1   COL2
#  <chr> <dbl>
#1 A         6
#2 B         1
#3 C         5
#4 D         1
#5 F         2
5

An optoin with trimws

library(dplyr)
df1 %>%
     group_by(COL1 = trimws(COL1, whitespace = ",.*")) %>% 
     summarise(COL2 = sum(COL2), .groups = 'drop')
# A tibble: 5 x 2
  COL1   COL2
  <chr> <dbl>
1 A         6
2 B         1
3 C         5
4 D         1
5 F         2
3

One option could be:

df %>%
 group_by(COL1 = gsub(",.*$", "", COL1)) %>%
 summarise(COL2 = sum(COL2))

  COL1   COL2
  <chr> <dbl>
1 A         6
2 B         1
3 C         5
4 D         1
5 F         2

If multiple non-duplicated elements could be present per rows:

df %>%
 group_by(COL1 = sapply(strsplit(as.character(COL1), ",", fixed = TRUE), function(x) toString(unique(x)))) %>%
 summarise(COL2 = sum(COL2))
2

We could use substring

library(dplyr)
df %>% 
    mutate(COL1 = substring(COL1, 1,1)) %>% 
    group_by(COL1) %>% 
    summarise(COL2 = sum(COL2))

Output:

  COL1   COL2
  <chr> <dbl>
1 A         6
2 B         1
3 C         5
4 D         1
5 F         2
2

You can str_extract based on [:alpha:]{1}, this will extract the first letter in the sequence, and then continue with group_by and summarise

data %>% 
        mutate(COL1 = str_extract(COL1,pattern = "[:alpha:]{1}")) %>% 
        group_by(COL1) %>% 
        summarise(COL2 = sum(COL2, na.rm = TRUE))

It gives the following output,

# A tibble: 5 x 2
  COL1   COL2
  <chr> <dbl>
1 A         6
2 B         1
3 C         5
4 D         1
5 F         2
2

You can use cSplit from splitstackshape as well

df %>% cSplit("COL1", ",", "long") %>%
  unique() %>% group_by(COL1) %>% summarise(COL2 = sum(COL2))

  COL1   COL2
  <chr> <dbl>
1 A         6
2 B         1
3 C         5
4 D         1
5 F         2
1

By using aggregate function in BaseR,

setNames(
    aggregate(df[,2] ,list(sub(",.*","",df[,1])),sum)
    , c("COL1","COL2"))

gives,

  COL1 COL2
1    A    6
2    B    1
3    C    5
4    D    1
5    F    2
1

Base R solution:

with(
  df, 
  aggregate(
    list(COL2 = COL2), 
    by = list(COL1 = gsub(
      "^(\\w).*", 
      "\\1", 
      COL1
      )
    ), 
    FUN = sum
  )
)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.