I have a dataset data with the columns X0 and value and would like to group by X0 after sorting and generate an indicator for the first row in each group which would look like the column first below:

   X0  value first
 1  A  26509   1
 2  A  28146   0
 3  B  19950   1
 4  B  19981   0
 5  B  20304   0
up vote 2 down vote accepted

Another dplyr method.

library(dplyr)

dat2 <- dat %>%
  group_by(X0) %>%
  mutate(first = as.integer(row_number() == 1L)) %>%
  ungroup()
dat2
# # A tibble: 5 x 3
#   X0    value first
#   <chr> <int> <int>
# 1 A     26509     1
# 2 A     28146     0
# 3 B     19950     1
# 4 B     19981     0
# 5 B     20304     0

Or use the data.table package.

library(data.table)

setDT(dat)

dat2 <- dat[, first := as.integer(rowid(X0) == 1L)]
dat2[]
#    X0 value first
# 1:  A 26509     1
# 2:  A 28146     0
# 3:  B 19950     1
# 4:  B 19981     0
# 5:  B 20304     0

DATA

dat <- read.table(text = "X0  value
 1  A  26509
                  2  A  28146
                  3  B  19950
                  4  B  19981
                  5  B  20304",
                  header = TRUE, stringsAsFactors = FALSE)

Multiple ways to do this, A dplyr way could be

library(dplyr)
df %>%
 group_by(X0) %>%
  mutate(new_first = if_else(row_number() == 1, 1, 0))

#  X0    value first new_first
#  <fct> <int> <int>     <dbl>
#1 A     26509     1      1.00
#2 A     28146     0      0   
#3 B     19950     1      1.00
#4 B     19981     0      0   
#5 B     20304     0      0   

The same logic can be used in base R ave method

df$new_first <- ave(df$value, df$X0, FUN = function(x)
                 ifelse(seq_along(x) == 1, 1, 0))


df
#  X0 value first new_first
#1  A 26509     1         1
#2  A 28146     0         0
#3  B 19950     1         1
#4  B 19981     0         0
#5  B 20304     0         0

More concisely,

as.integer(ave(df$value, df$X0, FUN = seq_along) == 1)
#[1] 1 0 1 0 0

We can use duplicated from base R to get a logical vector based on the duplicate values of 'X0', convert it to binary with as.integer

df1$first <- as.integer(!duplicated(df1$X0))
df1$first
#[1] 1 0 1 0 0

If the 'value' column is not sorted

library(dplyr)
df1 %>% 
    group_by(X0) %>%
    mutate(first =  as.integer(value == min(value)))

data

df1 <- structure(list(X0 = c("A", "A", "B", "B", "B"), value = c(26509L, 
28146L, 19950L, 19981L, 20304L), first = c(1L, 0L, 1L, 0L, 0L
)), .Names = c("X0", "value", "first"), class = "data.frame",
 row.names = c("1", "2", "3", "4", "5"))

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