2

I am trying to group values. I need to group all the distinct values in index into the least number of groups possible where the index column does not repeat within a group. I am trying to do this without a loop.

given:

# A tibble: 10 x 2
   barcode  index                      
   <chr>    <chr>                      
 1 XPO21451 a
 2 XPO21546 a
 3 XPO21500 a
 4 XPO21454 b
 5 XPO21503 c
 6 XPO21457 c
 7 XPO21506 1
 8 XPO21460 1
 9 XPO21509 1
10 XPO21463 2

I need a result of

group 1

# A tibble: 5 x 2
   barcode  index  
   <chr>    <chr>                      
 1 XPO21451 a
 4 XPO21454 b
 5 XPO21503 c
 7 XPO21506 1
10 XPO21463 2

group 2

# A tibble: 3 x 2
   barcode  index  
   <chr>    <chr>                      
 2 XPO21546 a
 6 XPO21457 c
 8 XPO21460 1

group 3

# A tibble: 2 x 2
   barcode  index  
   barcode  index                      
   <chr>    <chr>                      
 3 XPO21500 a
 9 XPO21509 1

Any Idea on how I can do this without creating an explicit loop or apply on this dataset?

Thanks in advance!

2

One option is to create a sequence by 'index' and then split the data by the 'grp' created

library(tidyverse)
df1 %>%
    group_by(index) %>% 
    mutate(grp = row_number()) %>%
    split(.$grp)

or with base R, use ave to create the sequence and do the split

grp <- with(df1, ave(seq_along(index), index, FUN = seq_along))
split(df1, grp)
#$`1`
#    barcode index
#1  XPO21451     a
#4  XPO21454     b
#5  XPO21503     c
#7  XPO21506     1
#10 XPO21463     2

#$`2`
#   barcode index
#2 XPO21546     a
#6 XPO21457     c
#8 XPO21460     1

#$`3`
#   barcode index
#3 XPO21500     a
#9 XPO21509     1

data

df1 <- structure(list(barcode = c("XPO21451", "XPO21546", "XPO21500", 
 "XPO21454", "XPO21503", "XPO21457", "XPO21506", "XPO21460", "XPO21509", 
 "XPO21463"), index = c("a", "a", "a", "b", "c", "c", "1", "1", 
 "1", "2")), class = "data.frame", row.names = c("1", "2", "3", 
 "4", "5", "6", "7", "8", "9", "10"))
  • 1
    Thank you. this is exaclty what I needed. since my dataset is way more complex then what I sent and I needed to do this across multiple columns individually then split I used your tidyverse example above with a few group by and mutates then tidyr::unite() the columns and split based on that. Huge help! thanks again! – Adam Wheeler Jan 28 at 19:46
0

Not certain about tidyverse, but a simple solution for grouping in the way that you are looking for can be obtained by using data.table

dat <- data.table(dat)
dat[,group := seq.int(.N), by = index, on = index]

this adds a group column to the dataset, which one can then use to extract the various groups

dat[group == 3]

Alternatively if saving the group is for some reason not possible:

dat <- data.table(dat)
dat[,.(barcode, index, group = seq.int(.N)), by = index, on = index][group == 3]

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