2

Below code creates data :

enter image description here

idCol <- c('1','1','1','2','2','3','3')
rowNumIdCol <- c('1','2','3','4','5','6','7')
stepCol <- c('step1')
step1Col <- c('30-12-2010:11.02', '31-12-2010:10.06', '01-01-2011:15.12','01-03-2017:09.00', '01-05-2017:09.00', '01-06-2017:09.00', '01-07-2017:09.00')
mydata <- data.frame(idCol , rowNumIdCol , step1Col)
colnames(mydata) <- c('id' , 'rowNumId' , 'step1')

I'm attempting to compute the difference in days by id between consecutive rows using :

library(dplyr)
library(lubridate)
mydata %>% 
  group_by(id) %>% 
  mutate(DaysSpent = as.numeric(difftime(dmy_hm(step1)[row_number], 
                                         dmy_hm(step1)[row_number()+1], units = 'days')))

But error is returned :

Error in mutate_impl(.data, dots) : 
  Evaluation error: invalid subscript type 'closure'.

To compute the cumulative difference between days by id can use :

mydata %>% 
  group_by(id) %>% 
  mutate(DaysSpent = as.numeric(difftime(dmy_hm(step1), 
                                         dmy_hm(step1)[1], units = 'days')))

How to compute days difference between just previous row ?

I think I need to access current and previous row as part of mutate ?

Update : the number of rows per id are variable.

| improve this question | | | | |
  • If there are only 2 rows per id, you could use first and last i.e. mydata %>% group_by(id) %>% mutate(ind = as.numeric(difftime(dmy_hm(first(step1)), dmy_hm(last(step1)), units = 'days'))) – akrun Oct 29 '17 at 15:29
  • @akrun the number of rows per id are variable, ive update question, thanks. – blue-sky Oct 29 '17 at 15:31
  • You can use dplyr::lag after you group by id – amanda Oct 29 '17 at 15:38
1

I'm not sure what results you were looking for, but I didn't get an error if I added () after the first row_number

also, threw in an arrange() just in case that matters

library(dplyr)
library(lubridate)
mydata %>% 
  group_by(id) %>% 
  # arrange(step1) %>%
  mutate(DaysSpent = as.numeric(
    difftime(dmy_hm(step1)[row_number()+1], ## this is where I added ()
             dmy_hm(step1)[row_number()], units = 'days')))
| improve this answer | | | | |
  • thanks but your code seems to return negative day values – blue-sky Oct 29 '17 at 15:42
  • your code returns negative day values, when it isn't returning errors. I'll fix mine... – Alex P Oct 29 '17 at 15:42
2

Using data.table this is can be done with shift:

library(data.table)

setDT(mydata)[, DaysSpent := difftime(dmy_hm(step1), dmy_hm(shift(step1, type = "lag")), units = "days"), by = id]

#   id rowNumId            step1       DaysSpent
#1:  1        1 30-12-2010:11.02         NA days
#2:  1        2 31-12-2010:10.06  0.9611111 days
#3:  1        3 01-01-2011:15.12  1.2125000 days
#4:  2        4 01-03-2017:09.00         NA days
#5:  2        5 01-05-2017:09.00 61.0000000 days
#6:  3        6 01-06-2017:09.00         NA days
#7:  3        7 01-07-2017:09.00 30.0000000 days
| improve this answer | | | | |
2

I think using lag() is better for this task:

library(dplyr)
library(lubridate)
mydata %>% 
  group_by(id) %>% 
  mutate(
    DaysSpent = as.numeric(difftime(
      dmy_hm(step1), lag(dmy_hm(step1)), units = 'days'
    ))
  )

Also consider converting column step1 to POSIXct from the start:

mydata %>% 
  group_by(id) %>% 
  mutate(
    step1 = dmy_hm(step1),
    DaysSpent = as.numeric(difftime(
      step1, lag(step1), units = 'days'
    ))
  )
| improve this answer | | | | |

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.