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