1

Having this data:

dates
1990-02-02 01:00:00
1990-02-02 02:00:00
1990-02-03 01:00:00
1990-02-03 02:00:00
1990-02-04 01:00:00
1990-02-04 02:00:00

Could I create a column, in which every row has the number of day like this?

number dates
1      1990-02-02 01:00:00
1      1990-02-02 02:00:00
2      1990-02-03 01:00:00
2      1990-02-03 02:00:00
3      1990-02-04 01:00:00
3      1990-02-04 02:00:00

3 Answers 3

2

The rank function should do what you need but consult the documentation for it as there's not an easily reproducible exampe for me to play with

temp <- data.frame(dates = c('1990-02-02 01:00:00',
                             '1990-02-02 02:00:00',
                             '1990-02-03 01:00:00',
                             '1990-02-03 02:00:00',
                             '1990-02-04 01:00:00',
                             '1990-02-04 02:00:00',
                             '1990-02-04 03:00:00'))
temp$datesonly<-as.Date(temp$dates)
temp2<-data.frame(dates=unique(temp$datesonly),ranks=rank(unique(temp$datesonly),ties.method="first"))
temp<-merge(temp,temp2,by.x="datesonly",by.y="dates")
5
  • I think you mean as.Date (upper case D)? But I'm not sure that this approach would work anyway. Jun 11, 2013 at 14:30
  • cheers for the heads up! I'm not sure based on what other people put, but the example does indicate that the days should be chronologically given a rank as opposed the day of the month - I'm still relatively new to R myself so it'll be interesting to see what does work if a rank doesn't Jun 11, 2013 at 14:34
  • 1
    But with rank, and ties.method = "first", you're just going to get a series from 1 to the number of rows of your data. Try it with my sample data to see what I mean. Jun 11, 2013 at 14:43
  • +1 for persisting through with edits based on the comments! unique is what you were looking for with rank, though at that point ties.method doesn't make sense :) One advantage of merge is that the data do not need to be sorted first. Jun 11, 2013 at 16:27
  • In case you're interested in alternatives, I've just posted another as an edit to my original answer. Jun 11, 2013 at 16:43
2

This solution assumes that the dates are listed in chronological order (or are at least sorted by day) and that the dates are actually formatted as date time objects.

temp <- data.frame(dates = c('1990-02-02 01:00:00',
                             '1990-02-02 02:00:00',
                             '1990-02-03 01:00:00',
                             '1990-02-03 02:00:00',
                             '1990-02-04 01:00:00',
                             '1990-02-04 02:00:00',
                             '1990-02-04 03:00:00'))
temp$dates <- as.POSIXct(temp$dates, tz = "GMT")
x <- table(as.Date(temp$dates))
temp$number <- rep(seq_along(x), x)
temp
#                 dates number
# 1 1990-02-02 01:00:00      1
# 2 1990-02-02 02:00:00      1
# 3 1990-02-03 01:00:00      2
# 4 1990-02-03 02:00:00      2
# 5 1990-02-04 01:00:00      3
# 6 1990-02-04 02:00:00      3
# 7 1990-02-04 03:00:00      3

The basic idea is to just strip the time out (using as.Date) and tabulate the frequency of each day. You can then use rep on that output to create your "number" variable.


Slap forehead and post a simpler solution

Just use factor on as.Date. This would work even on a data.frame where the data are not ordered:

temp <- data.frame(dates = c('1990-02-02 01:00:00',
                             '1990-02-02 02:00:00',
                             '1990-02-03 01:00:00',
                             '1990-02-03 02:00:00',
                             '1990-02-04 01:00:00',
                             '1990-02-04 02:00:00',
                             '1990-02-04 03:00:00'))
temp$dates <- as.POSIXct(temp$dates, tz = "GMT")
within(temp, {
  counts <- as.numeric(factor(as.Date(dates)))
})
#                 dates counts
# 1 1990-02-02 01:00:00      1
# 2 1990-02-02 02:00:00      1
# 3 1990-02-03 01:00:00      2
# 4 1990-02-03 02:00:00      2
# 5 1990-02-04 01:00:00      3
# 6 1990-02-04 02:00:00      3
# 7 1990-02-04 03:00:00      3
0
0

Tries with this...

- library(lubridate)

date <- c("1990-02-02 01:00:00",
"1990-02-02 02:00:00",
"1990-02-03 01:00:00",
"1990-02-03 02:00:00",
"1990-02-04 01:00:00",
"1990-02-04 02:00:00")

number <- day(date)
cbind.data.frame(number,date)
0

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